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Using Predictive Analytics to Optimize
Asset Maintenance in the Utilities Industry
By working proactively to collect and distill digital information,
transmission and distribution utilities can enhance customer
satisfaction, reduce total cost of ownership, optimize the field
force and improve compliance.
Executive Summary
Aging assets, an aging workforce, the introduction
of networked smart grids and a proliferation of
intelligent devices on the power grid are challeng-
ing utilities to find more effective and efficient
ways to maintain and monitor their critical assets
— and to do so with high availability and reliability.
The ultimate objective of traditional or smart
asset management is to help reduce/minimize/
optimize asset lifecycle costs across all phases,
from asset investment planning, network design,
procurement, installation and commissioning,
operation and maintenance through decommis-
sioning and disposal/replacement.
Optimizing the costs associated with each of
these lifecycle phases remains among the key
objectives of an asset-intensive utility organi-
zation. Sadly, preventive maintenance sched-
ules prescribed by manufacturers haven’t really
helped utilities to avoid asset failures. Many
utilities have realized that avoiding unexpected
outages, managing asset risks and maintaining
assets before failure strikes are critical goals to
improve customer satisfaction.
A recent survey1
across 200 global utilities
suggests that in the area of power distribution,
reducing outages and shortening restoration
times are the most significant challenges. Approx-
imately 58% of surveyed utilities said they need a
mechanism for predicting equipment failure.
These challenges have forced utilities to leverage
analytics to extend the life of assets and bring
more predictability to their performance and
health, which ultimately helps them plan and pri-
oritize maintenance activities.
Predictive analytics is a process of using statisti-
cal and data mining techniques to analyze historic
and current data sets, create rules and predic-
tive models and predict future events. This white
paper examines how transmission and distribu-
tion (T&D) utilities can effectively apply predictive
analytics to smart asset management to realize
asset lifecycle cost reduction and improve the
accuracy of their decision-making. Three mean-
ingful types of predictive analytics benefits have
been identified:
•	Technology: The amount of money saved on
technology or technology costs avoided by
introducing the analytic solution.
•	Productivity: Efficiency savings due to the
reduced amount of time and effort required for
particular tasks.
cognizant 20-20 insights | december 2014
• Cognizant 20-20 Insights
cognizant 20-20 insights 2
•	Business process enhancement: All identifi-
able annual savings that were realized due to
changes in business process supported by the
analytic application.
The Business Case for Predictive
Asset Analytics
As Figure 1 illustrates, predictive asset analytics
can be counted on to help T&D utilities achieve
the following objectives:
•	Improved customer satisfaction and reliabil-
ity of power: Customer satisfaction and power
reliability are two important measures of a
utility’s performance. Unexpected equipment
failures impact both measures. Customers
expect planned outages to be communicated in
advance to plan their electricity consumption.
Utilities are also under pressure from strict
outage regulations to proactively maintain
their assets before failure to avoid penalties.
The reliability metrics that U.S. utilities must
report to regulatory authorities Include:
>> SAIDI: The minutes of sustained outages
per customer per year.
>> SAIFI: The number of sustained outages per
customer per year.
>> MAIFI: The number of momentary outages
per customer per year.
•	Reduced total cost of ownership by prioritiz-
ing maintenance activities: Each asset has
multiple associated costs — primarily related
to procurement, installation, operations and
maintenance, failure and decommissioning.
Unexpected failure cost is the leading expense
component of any asset. Failure cost includes
the expense of the asset in service, collateral
damage cost, regulatory penalty, disposal
of damaged asset, lost revenue, intangible
costs, etc. Thus, utilities can save a significant
amount of money by avoiding key equipment
failure. Predictive maintenance practices
utilize historical data from multiple sources
to build accurate, testable predictive models,
which allows us to generate predictions and
risk scores. Modeling techniques produce
interpretable information allowing personnel
to understand the implications of events,
enabling them to take action based on these
implications.
•	Better route planning and optimization of
field crews: A clear understanding of asset
health can help utilities in work planning,
prioritization and scheduling. Unexpected
equipment failure often requires reallocation
of crews from other work locations to restore
the outage, hiring of extra labor and contrac-
tors and, often, a complete rescheduling of
other planned maintenance activities. The
percentage of work from reactive activities, in
our view, can be effectively used for predictive
maintenance, thus improving crew response
time and utilization and reducing total mainte-
nance duration and asset down time.
Figure 1
How Predictive Analytics Can Help T&D Utilities
Customer
Satisfaction
& Reliability
Reduce Total
Cost of
Ownership
Safety and
Compliance
Field Crew
Efficiency
Proactively address
potential safety
risks and
compliance issues
by collating and
analyzing data from
multiple sources.
Avoid unexpected
outages.
Proactive outage
communication to
customer.
Factor in actual
health of equipment
into maintenance
planning.
Avoid leading
cost component –
failure cost.
Shift to predictive
maintenance
improves crew
utilization.
Work order process
synergies by EAM
integration.
cognizant 20-20 insights 3
•	Improvement on overall safety and compli-
ance: Predictive asset analytics will proactively
address potential safety risks. By integrating
data from multiple sources — SCADA, EAM-GIS,
online monitoring systems, weather channels
along with nonoperational data (vendor
provided operational rules, equipment data
sheets, industry standards, etc.) — utilities can
quickly identify safety risks and take suitable
operation actions to mitigate them.
Predictive Asset Analytics
Implementation Challenges
As utilities embrace predictive analytics to
enhance asset management, they need to come
to grips with the following issues:
•	Data management: The shift to a predictive
analytics solution brings multiple challenges in
data management. These include:
>> Data quality: Predictive analytics solutions
are intended to collect data across internal
systems such as EAM, SCADA, Historian
and online monitoring systems. The com-
mon issues seen include duplicate data, dif-
ferent time stamps in multiple systems for
the same data and conflicting information in
multiple systems. Poor data quality results in
bad analysis and recommendations.
>> Data to look for: Subject matter experts
need to define input data requirements
for solutions. Identification of critical data
points and exclusion of less relevant data
items are essential before going ahead with
predictive analytics.
>> Integrated data collection: The existence of
multiple data silos is another problem. Utili-
ties use multiple systems such as SCADA,
EAM, online monitoring, etc., which often do
not easily communicate with one another.
A predictive solution should be able to inte-
grate legacy systems and new systems such
as GIS, weather and events systems to build
accurate, testable predictive models.
>> Dealing with large data sizes: Traditional
legacy systems are not designed for han-
dling today’s volume of data needed for
predictive analysis (e.g., terabytes of data).
Depending on the scope of the solution, a
utility should create an approach for man-
aging data or adopt a big data platform for
managing the data.
•	 Choosing the right technology platform: The
appropriate choice of platform typically de-
pends on application scope, such as use cases
and response times, the volume and variety of
data, the existing systems environment and
extensibility to accommodate future needs.
The platform should be able to handle both
unstructured and structured data including
events, time series and metadata.
Advanced computing capabilities such as
in-memory processing and 3-D storage are also
required for providing services such as search-
query-aggregate on the go. For advanced
analytics, the platform should be capable of
integrating with third-party statistical and
modeling tools, such as R and SAS, as well
as real-time event processing to apply these
models and logic to identify root causes and
predict failures before they happen.
•	Uncertainty in implementation cost and ROI:
The ROI models for predictive asset solutions
are often complex and are not generic for all
assets. Predictive asset analytics is about max-
imizing asset utilization while minimizing unex-
pected failures, Cap-Ex and Op-Ex. However,
failure avoidance can lead to additional
maintenance work on the asset. Thus, any
reduction in failure cost will lead to increases
in maintenance costs. Predictive maintenance
also brings savings in work management by
diverting reactive maintenance workloads to
planned maintenance. By thus increasing the
efficiency of maintenance schedules, costs
and resources, it results in fewer outages and
higher customer satisfaction.
Predictive Asset Analytics:
One Solution
Once the utility has selected critical assets that
should be placed under predictive maintenance,
we suggest the following approach.
•	Define contributing parameters. A business
SME-guided approach is better than a purely
data-driven approach. The first step is to define
the input variables for analysis. Most of the
contributing parameters to asset failure are
known to the SME. Statistical analytics can add
value by improving rules, as well as identifying
and bringing more variables under monitoring
and analysis.
•	Create known domain rules. Condition
monitoring rules are based on known relation-
cognizant 20-20 insights 4
Figure 2
Anatomy of a Predictive Analytics Asset Management Environment
SCADA/
Historian
Data
Server
Analytics Engine)
Application Server
Scheduled Jobs
Real-time/Historic Data
Predictions/
Notifications
Weather
Data
Weather
Service
Rules Repository
Data Source
Archive DB
Portal Data
Security Authorization KPIGIS Service
Internal
systems
Functionalities
Asset
Model
Interface Interface
Online Monitoring
Systems
Operations
Dashboard
Predictive
Notifications
Predictive
Rules Setup
Enterprise
Asset
Management
External
systems
ships between the contributing variables and
the failure event. In addition to known rules,
custom action rules can be configured to
trigger automatic work orders.
•	Create unknown rules based on analytics.
Analyze holistic historical asset failure infor-
mation from SCADA/Historian, EAM systems,
weather feeds and online monitoring systems
to gain insights into failures. Given the
multitude of statistical analysis methods
available, the utility must carefully evaluate the
solution objectives and data elements to make
an informed choice. After analysis, create new
prediction rules based on insights, assign risk
levels and automate work order actions.
Key solution components include:
•	An operations dashboard: Business users will
appreciate a GIS-enabled, intuitive summary
dashboard with quick summary of alerts and
work orders.
•	An asset model: A statistical module is required
to analyze the historic event information and
to create an asset model. Real-time informa-
tion will be compared with the reference asset
model to predict the failure event.
•	Rules setup: Organizations must provide
an intuitive interface to help users pull infor-
mation from multiple systems and configure
known alerts and actions rules for meaningful
asset management. The same functionality can
be used to configure alerts and actions rules
based on statistical analysis, taken from the
asset model.
•	Prediction notification: A summary view of
recent notifications in the main screen can
easily attract the utility operator’s attention,
thus enabling him to act quickly to avoid
failures. A detailed view of predictive alerts will
help the utility operator to explore the nature
of alerts in detail and make informed decisions.
The EAM system should be integrated with a
predictive system; this enables the user to view
asset-specific work-order status and trigger
new work orders directly from the predictive
solution, based on predictive alerts.
A conceptual solution architecture is illustrated
in Figure 2. The contributing parameter data
(real-time and history) is collated from multiple
systems and managed by a big data server, which
has high availability and fault tolerance capabili-
ties and is equipped to handle a large volume and
variety of data. External systems such as EAM and
GIS are integrated with the applications server.
The core part of this environment is the analytics
engine, which can either be part of the platform
cognizant 20-20 insights 5
or integrated via a third-party component. An
ideal solution should support desktop and mobile
interfaces, with solution components such as an
operations dashboard, predictive notifications,
asset models and predictive rules engine.
Looking Forward
As organizations move forward on their predic-
tive analytics journeys, we recommend the fol-
lowing:
•	Tightly define the business need, future
requirements and solution extensibility.
Utilities need to ensure that a predictive asset
analytics solution fits into their overall business
strategy and future business requirements.
We suggest utilities decide on three elements:
define the immediate objectives of the solution;
understand future business requirements;
and assess the extensibility requirements to
support additional applications. Once these
aspects are known, the analytics platform and
statistical method for the solution will more
easily follow.
•	Improve process and upgrade IT infrastruc-
ture. Most utilities may not have the right
processes and data needed to support analytics
solutions. Therefore, it is imperative to improve
business processes and upgrade IT infrastruc-
ture to support any analytics solution before
it is deployed. A utility can choose to follow a
step-wise approach where it first implements
the analytics capability, addressing existing
process and infrastructure needs, and then
gradually rolls out advanced analytics func-
tionalities to fit with ongoing process improve-
ment and IT system upgrades.
•	Embrace a data-driven culture. Presently,
most utilities follow a person-centric approach.
They completely rely on the experience of their
engineers. Given the industry’s aging work
force, the time has come to adopt a data-driven
culture to reinforce its viability as many SMEs
retire or leave the workforce.
•	Team play is needed among players to
succeed in implementation. Implementation
quality is an important issue that prevents
utilities from achieving projected results from
predictiveanalyticsprograms.Veryfewsolution
providers have an end-to-end capability to
implement predictive solutions. To mitigate the
implementation risk, utilities should involve
multiple providers and encourage “team play.”
This strategy will bring best-in-class in solution
components provided by various expert players
in data management, systems integration,
analytics engines and operational technology
integration.
•	Have you calculated your returns correctly?
Calculating ROI for predictive analytics is
difficult. While many of the benefits, such
as better communication and improved
knowledge, are intangible, an effort should
be made to quantity the benefits of a better
operational decision. Due care must be given
and include scenario analysis; direct and
indirect impact on cost and revenue compo-
nents; improved process benefits; and related
synergies derived from predictive asset
solutions.
Rather than implementing only ”must have’”
functionalities in the solution, utilities should
carry out cost-benefit analyses that include the
deployment of ”must haves,” ”should haves”
and “may haves,” and understand the complete
benefits before deciding on the scope of the
solution. Experience shows that the addition
of more functionality — thereby extending the
program scope — can significantly increase ROI
in the long term.
Footnote
1	 Ventyx Electric Utility Executive Insights Annual Survey Results, 2013.
About Cognizant
Cognizant (NASDAQ: CTSH) is a leading provider of information technology, consulting, and business
process outsourcing services, dedicated to helping the world’s leading companies build stronger business-
es. Headquartered in Teaneck, New Jersey (U.S.), Cognizant combines a passion for client satisfaction,
technology innovation, deep industry and business process expertise, and a global, collaborative work-
force that embodies the future of work. With over 75 development and delivery centers worldwide and
approximately 199,700 employees as of September 30, 2014, Cognizant is a member of the NASDAQ-100,
the S&P 500, the Forbes Global 2000, and the Fortune 500 and is ranked among the top performing and
fastest growing companies in the world. Visit us online at www.cognizant.com or follow us on Twitter: Cognizant.
World Headquarters
500 Frank W. Burr Blvd.
Teaneck, NJ 07666 USA
Phone: +1 201 801 0233
Fax: +1 201 801 0243
Toll Free: +1 888 937 3277
Email: inquiry@cognizant.com
European Headquarters
1 Kingdom Street
Paddington Central
London W2 6BD
Phone: +44 (0) 20 7297 7600
Fax: +44 (0) 20 7121 0102
Email: infouk@cognizant.com
India Operations Headquarters
#5/535, Old Mahabalipuram Road
Okkiyam Pettai, Thoraipakkam
Chennai, 600 096 India
Phone: +91 (0) 44 4209 6000
Fax: +91 (0) 44 4209 6060
Email: inquiryindia@cognizant.com
­­© Copyright 2014, Cognizant. All rights reserved. No part of this document may be reproduced, stored in a retrieval system, transmitted in any form or by any
means, electronic, mechanical, photocopying, recording, or otherwise, without the express written permission from Cognizant. The information contained herein is
subject to change without notice. All other trademarks mentioned herein are the property of their respective owners.
About the Authors
Quang Nguyen is a Consulting Director within Cognizant Business Consulting’s Energy and Utilities
Practice. He has over 15 years of consulting experience, 10 of which were spent in manufacturing. Quang
has experience in smart grid initiatives, including EE/DR programs, assets management, security,
customer portals, SAP CRM, GIS, HAN, smart meter network operations, alerts and notifications,
OMS, data governance, customer/operations analytics and rate calculation engines. He holds a B.A. in
chemical engineering from Case Western Reserve University, an M.S. in applied math and statistics from
Rochester Institute of Technology and an M.B.A. from University of Rochester. He can be reached at
Quang.Nguyen2@cognizant.com.
Sachin Kumar is a Senior Manager of Consulting within Cognizant Business Consulting’s Energy and
Utilities Practice. He has 18-plus years of global energy and utilities experience in consulting and business
operations and has led consulting engagements with several large global energy utility companies.
Sachin is also responsible for developing Cognizant’s utilities industry solutions, with a focus on the
T&D segment. He is a certified energy manager and auditor and has a degree in electrical engineering
and a post-graduate certification in general management. He can be reached at Sachin-12.Kumar-12@
cognizant.com.
Girish K.G is a Senior Consultant within Cognizant Business Consulting’s Energy and Utilities Practice.
He has more than seven years of global energy and utilities experience in consulting as well as plant
operations and maintenance. Girish has been in client-facing lead roles in multiple consulting engage-
ments, where he has offered counsel on process transformation and business requirements. He has
strong experience in asset management, work management, retail and C&I billing, complex pricing and
product management. Girish holds a post-graduate degree in management from Indian Institute of
Management. He can be reached at Girish.KG@cognizant.com.
Acknowledgment
The authors wish to thank Jessy Smith, a Senior Architect within Cognizant’s EMS Business Unit, for her
valuable inputs to this white paper on analytics platforms.

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Using Predictive Analytics to Optimize Asset Maintenance in the Utilities Industry

  • 1. Using Predictive Analytics to Optimize Asset Maintenance in the Utilities Industry By working proactively to collect and distill digital information, transmission and distribution utilities can enhance customer satisfaction, reduce total cost of ownership, optimize the field force and improve compliance. Executive Summary Aging assets, an aging workforce, the introduction of networked smart grids and a proliferation of intelligent devices on the power grid are challeng- ing utilities to find more effective and efficient ways to maintain and monitor their critical assets — and to do so with high availability and reliability. The ultimate objective of traditional or smart asset management is to help reduce/minimize/ optimize asset lifecycle costs across all phases, from asset investment planning, network design, procurement, installation and commissioning, operation and maintenance through decommis- sioning and disposal/replacement. Optimizing the costs associated with each of these lifecycle phases remains among the key objectives of an asset-intensive utility organi- zation. Sadly, preventive maintenance sched- ules prescribed by manufacturers haven’t really helped utilities to avoid asset failures. Many utilities have realized that avoiding unexpected outages, managing asset risks and maintaining assets before failure strikes are critical goals to improve customer satisfaction. A recent survey1 across 200 global utilities suggests that in the area of power distribution, reducing outages and shortening restoration times are the most significant challenges. Approx- imately 58% of surveyed utilities said they need a mechanism for predicting equipment failure. These challenges have forced utilities to leverage analytics to extend the life of assets and bring more predictability to their performance and health, which ultimately helps them plan and pri- oritize maintenance activities. Predictive analytics is a process of using statisti- cal and data mining techniques to analyze historic and current data sets, create rules and predic- tive models and predict future events. This white paper examines how transmission and distribu- tion (T&D) utilities can effectively apply predictive analytics to smart asset management to realize asset lifecycle cost reduction and improve the accuracy of their decision-making. Three mean- ingful types of predictive analytics benefits have been identified: • Technology: The amount of money saved on technology or technology costs avoided by introducing the analytic solution. • Productivity: Efficiency savings due to the reduced amount of time and effort required for particular tasks. cognizant 20-20 insights | december 2014 • Cognizant 20-20 Insights
  • 2. cognizant 20-20 insights 2 • Business process enhancement: All identifi- able annual savings that were realized due to changes in business process supported by the analytic application. The Business Case for Predictive Asset Analytics As Figure 1 illustrates, predictive asset analytics can be counted on to help T&D utilities achieve the following objectives: • Improved customer satisfaction and reliabil- ity of power: Customer satisfaction and power reliability are two important measures of a utility’s performance. Unexpected equipment failures impact both measures. Customers expect planned outages to be communicated in advance to plan their electricity consumption. Utilities are also under pressure from strict outage regulations to proactively maintain their assets before failure to avoid penalties. The reliability metrics that U.S. utilities must report to regulatory authorities Include: >> SAIDI: The minutes of sustained outages per customer per year. >> SAIFI: The number of sustained outages per customer per year. >> MAIFI: The number of momentary outages per customer per year. • Reduced total cost of ownership by prioritiz- ing maintenance activities: Each asset has multiple associated costs — primarily related to procurement, installation, operations and maintenance, failure and decommissioning. Unexpected failure cost is the leading expense component of any asset. Failure cost includes the expense of the asset in service, collateral damage cost, regulatory penalty, disposal of damaged asset, lost revenue, intangible costs, etc. Thus, utilities can save a significant amount of money by avoiding key equipment failure. Predictive maintenance practices utilize historical data from multiple sources to build accurate, testable predictive models, which allows us to generate predictions and risk scores. Modeling techniques produce interpretable information allowing personnel to understand the implications of events, enabling them to take action based on these implications. • Better route planning and optimization of field crews: A clear understanding of asset health can help utilities in work planning, prioritization and scheduling. Unexpected equipment failure often requires reallocation of crews from other work locations to restore the outage, hiring of extra labor and contrac- tors and, often, a complete rescheduling of other planned maintenance activities. The percentage of work from reactive activities, in our view, can be effectively used for predictive maintenance, thus improving crew response time and utilization and reducing total mainte- nance duration and asset down time. Figure 1 How Predictive Analytics Can Help T&D Utilities Customer Satisfaction & Reliability Reduce Total Cost of Ownership Safety and Compliance Field Crew Efficiency Proactively address potential safety risks and compliance issues by collating and analyzing data from multiple sources. Avoid unexpected outages. Proactive outage communication to customer. Factor in actual health of equipment into maintenance planning. Avoid leading cost component – failure cost. Shift to predictive maintenance improves crew utilization. Work order process synergies by EAM integration.
  • 3. cognizant 20-20 insights 3 • Improvement on overall safety and compli- ance: Predictive asset analytics will proactively address potential safety risks. By integrating data from multiple sources — SCADA, EAM-GIS, online monitoring systems, weather channels along with nonoperational data (vendor provided operational rules, equipment data sheets, industry standards, etc.) — utilities can quickly identify safety risks and take suitable operation actions to mitigate them. Predictive Asset Analytics Implementation Challenges As utilities embrace predictive analytics to enhance asset management, they need to come to grips with the following issues: • Data management: The shift to a predictive analytics solution brings multiple challenges in data management. These include: >> Data quality: Predictive analytics solutions are intended to collect data across internal systems such as EAM, SCADA, Historian and online monitoring systems. The com- mon issues seen include duplicate data, dif- ferent time stamps in multiple systems for the same data and conflicting information in multiple systems. Poor data quality results in bad analysis and recommendations. >> Data to look for: Subject matter experts need to define input data requirements for solutions. Identification of critical data points and exclusion of less relevant data items are essential before going ahead with predictive analytics. >> Integrated data collection: The existence of multiple data silos is another problem. Utili- ties use multiple systems such as SCADA, EAM, online monitoring, etc., which often do not easily communicate with one another. A predictive solution should be able to inte- grate legacy systems and new systems such as GIS, weather and events systems to build accurate, testable predictive models. >> Dealing with large data sizes: Traditional legacy systems are not designed for han- dling today’s volume of data needed for predictive analysis (e.g., terabytes of data). Depending on the scope of the solution, a utility should create an approach for man- aging data or adopt a big data platform for managing the data. • Choosing the right technology platform: The appropriate choice of platform typically de- pends on application scope, such as use cases and response times, the volume and variety of data, the existing systems environment and extensibility to accommodate future needs. The platform should be able to handle both unstructured and structured data including events, time series and metadata. Advanced computing capabilities such as in-memory processing and 3-D storage are also required for providing services such as search- query-aggregate on the go. For advanced analytics, the platform should be capable of integrating with third-party statistical and modeling tools, such as R and SAS, as well as real-time event processing to apply these models and logic to identify root causes and predict failures before they happen. • Uncertainty in implementation cost and ROI: The ROI models for predictive asset solutions are often complex and are not generic for all assets. Predictive asset analytics is about max- imizing asset utilization while minimizing unex- pected failures, Cap-Ex and Op-Ex. However, failure avoidance can lead to additional maintenance work on the asset. Thus, any reduction in failure cost will lead to increases in maintenance costs. Predictive maintenance also brings savings in work management by diverting reactive maintenance workloads to planned maintenance. By thus increasing the efficiency of maintenance schedules, costs and resources, it results in fewer outages and higher customer satisfaction. Predictive Asset Analytics: One Solution Once the utility has selected critical assets that should be placed under predictive maintenance, we suggest the following approach. • Define contributing parameters. A business SME-guided approach is better than a purely data-driven approach. The first step is to define the input variables for analysis. Most of the contributing parameters to asset failure are known to the SME. Statistical analytics can add value by improving rules, as well as identifying and bringing more variables under monitoring and analysis. • Create known domain rules. Condition monitoring rules are based on known relation-
  • 4. cognizant 20-20 insights 4 Figure 2 Anatomy of a Predictive Analytics Asset Management Environment SCADA/ Historian Data Server Analytics Engine) Application Server Scheduled Jobs Real-time/Historic Data Predictions/ Notifications Weather Data Weather Service Rules Repository Data Source Archive DB Portal Data Security Authorization KPIGIS Service Internal systems Functionalities Asset Model Interface Interface Online Monitoring Systems Operations Dashboard Predictive Notifications Predictive Rules Setup Enterprise Asset Management External systems ships between the contributing variables and the failure event. In addition to known rules, custom action rules can be configured to trigger automatic work orders. • Create unknown rules based on analytics. Analyze holistic historical asset failure infor- mation from SCADA/Historian, EAM systems, weather feeds and online monitoring systems to gain insights into failures. Given the multitude of statistical analysis methods available, the utility must carefully evaluate the solution objectives and data elements to make an informed choice. After analysis, create new prediction rules based on insights, assign risk levels and automate work order actions. Key solution components include: • An operations dashboard: Business users will appreciate a GIS-enabled, intuitive summary dashboard with quick summary of alerts and work orders. • An asset model: A statistical module is required to analyze the historic event information and to create an asset model. Real-time informa- tion will be compared with the reference asset model to predict the failure event. • Rules setup: Organizations must provide an intuitive interface to help users pull infor- mation from multiple systems and configure known alerts and actions rules for meaningful asset management. The same functionality can be used to configure alerts and actions rules based on statistical analysis, taken from the asset model. • Prediction notification: A summary view of recent notifications in the main screen can easily attract the utility operator’s attention, thus enabling him to act quickly to avoid failures. A detailed view of predictive alerts will help the utility operator to explore the nature of alerts in detail and make informed decisions. The EAM system should be integrated with a predictive system; this enables the user to view asset-specific work-order status and trigger new work orders directly from the predictive solution, based on predictive alerts. A conceptual solution architecture is illustrated in Figure 2. The contributing parameter data (real-time and history) is collated from multiple systems and managed by a big data server, which has high availability and fault tolerance capabili- ties and is equipped to handle a large volume and variety of data. External systems such as EAM and GIS are integrated with the applications server. The core part of this environment is the analytics engine, which can either be part of the platform
  • 5. cognizant 20-20 insights 5 or integrated via a third-party component. An ideal solution should support desktop and mobile interfaces, with solution components such as an operations dashboard, predictive notifications, asset models and predictive rules engine. Looking Forward As organizations move forward on their predic- tive analytics journeys, we recommend the fol- lowing: • Tightly define the business need, future requirements and solution extensibility. Utilities need to ensure that a predictive asset analytics solution fits into their overall business strategy and future business requirements. We suggest utilities decide on three elements: define the immediate objectives of the solution; understand future business requirements; and assess the extensibility requirements to support additional applications. Once these aspects are known, the analytics platform and statistical method for the solution will more easily follow. • Improve process and upgrade IT infrastruc- ture. Most utilities may not have the right processes and data needed to support analytics solutions. Therefore, it is imperative to improve business processes and upgrade IT infrastruc- ture to support any analytics solution before it is deployed. A utility can choose to follow a step-wise approach where it first implements the analytics capability, addressing existing process and infrastructure needs, and then gradually rolls out advanced analytics func- tionalities to fit with ongoing process improve- ment and IT system upgrades. • Embrace a data-driven culture. Presently, most utilities follow a person-centric approach. They completely rely on the experience of their engineers. Given the industry’s aging work force, the time has come to adopt a data-driven culture to reinforce its viability as many SMEs retire or leave the workforce. • Team play is needed among players to succeed in implementation. Implementation quality is an important issue that prevents utilities from achieving projected results from predictiveanalyticsprograms.Veryfewsolution providers have an end-to-end capability to implement predictive solutions. To mitigate the implementation risk, utilities should involve multiple providers and encourage “team play.” This strategy will bring best-in-class in solution components provided by various expert players in data management, systems integration, analytics engines and operational technology integration. • Have you calculated your returns correctly? Calculating ROI for predictive analytics is difficult. While many of the benefits, such as better communication and improved knowledge, are intangible, an effort should be made to quantity the benefits of a better operational decision. Due care must be given and include scenario analysis; direct and indirect impact on cost and revenue compo- nents; improved process benefits; and related synergies derived from predictive asset solutions. Rather than implementing only ”must have’” functionalities in the solution, utilities should carry out cost-benefit analyses that include the deployment of ”must haves,” ”should haves” and “may haves,” and understand the complete benefits before deciding on the scope of the solution. Experience shows that the addition of more functionality — thereby extending the program scope — can significantly increase ROI in the long term. Footnote 1 Ventyx Electric Utility Executive Insights Annual Survey Results, 2013.
  • 6. About Cognizant Cognizant (NASDAQ: CTSH) is a leading provider of information technology, consulting, and business process outsourcing services, dedicated to helping the world’s leading companies build stronger business- es. Headquartered in Teaneck, New Jersey (U.S.), Cognizant combines a passion for client satisfaction, technology innovation, deep industry and business process expertise, and a global, collaborative work- force that embodies the future of work. With over 75 development and delivery centers worldwide and approximately 199,700 employees as of September 30, 2014, Cognizant is a member of the NASDAQ-100, the S&P 500, the Forbes Global 2000, and the Fortune 500 and is ranked among the top performing and fastest growing companies in the world. Visit us online at www.cognizant.com or follow us on Twitter: Cognizant. World Headquarters 500 Frank W. Burr Blvd. Teaneck, NJ 07666 USA Phone: +1 201 801 0233 Fax: +1 201 801 0243 Toll Free: +1 888 937 3277 Email: inquiry@cognizant.com European Headquarters 1 Kingdom Street Paddington Central London W2 6BD Phone: +44 (0) 20 7297 7600 Fax: +44 (0) 20 7121 0102 Email: infouk@cognizant.com India Operations Headquarters #5/535, Old Mahabalipuram Road Okkiyam Pettai, Thoraipakkam Chennai, 600 096 India Phone: +91 (0) 44 4209 6000 Fax: +91 (0) 44 4209 6060 Email: inquiryindia@cognizant.com ­­© Copyright 2014, Cognizant. All rights reserved. No part of this document may be reproduced, stored in a retrieval system, transmitted in any form or by any means, electronic, mechanical, photocopying, recording, or otherwise, without the express written permission from Cognizant. The information contained herein is subject to change without notice. All other trademarks mentioned herein are the property of their respective owners. About the Authors Quang Nguyen is a Consulting Director within Cognizant Business Consulting’s Energy and Utilities Practice. He has over 15 years of consulting experience, 10 of which were spent in manufacturing. Quang has experience in smart grid initiatives, including EE/DR programs, assets management, security, customer portals, SAP CRM, GIS, HAN, smart meter network operations, alerts and notifications, OMS, data governance, customer/operations analytics and rate calculation engines. He holds a B.A. in chemical engineering from Case Western Reserve University, an M.S. in applied math and statistics from Rochester Institute of Technology and an M.B.A. from University of Rochester. He can be reached at Quang.Nguyen2@cognizant.com. Sachin Kumar is a Senior Manager of Consulting within Cognizant Business Consulting’s Energy and Utilities Practice. He has 18-plus years of global energy and utilities experience in consulting and business operations and has led consulting engagements with several large global energy utility companies. Sachin is also responsible for developing Cognizant’s utilities industry solutions, with a focus on the T&D segment. He is a certified energy manager and auditor and has a degree in electrical engineering and a post-graduate certification in general management. He can be reached at Sachin-12.Kumar-12@ cognizant.com. Girish K.G is a Senior Consultant within Cognizant Business Consulting’s Energy and Utilities Practice. He has more than seven years of global energy and utilities experience in consulting as well as plant operations and maintenance. Girish has been in client-facing lead roles in multiple consulting engage- ments, where he has offered counsel on process transformation and business requirements. He has strong experience in asset management, work management, retail and C&I billing, complex pricing and product management. Girish holds a post-graduate degree in management from Indian Institute of Management. He can be reached at Girish.KG@cognizant.com. Acknowledgment The authors wish to thank Jessy Smith, a Senior Architect within Cognizant’s EMS Business Unit, for her valuable inputs to this white paper on analytics platforms.