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AI for Grid Forecasting and Outages

July 16, 2026 Online :: Central Time

Artificial intelligence and advanced analytics are beginning to transform how electric utilities forecast demand, predict outages, and manage grid operations. As utilities deploy advanced metering infrastructure, sensor networks, and real-time monitoring systems, they are gaining access to unprecedented volumes of operational data that can support predictive decision-making. This course provides a practical overview of how utilities are applying AI-driven forecasting and predictive analytics to improve grid reliability, outage response, and asset management. Rather than focusing solely on technical AI concepts, the course examines the real operational decisions utilities must make, from forecasting electricity demand and predicting storm-related outages to monitoring asset health and planning grid upgrades.

Register now to join us in exploring AI-driven emerging forecasting challenges related to electrification, distributed energy resources, and increasingly complex generation interconnection processes.

Learning Outcomes

  1. Explain how electric utilities are using advanced analytics and artificial intelligence to improve forecasting, outage prediction, and grid reliability
  2. Identify the operational data infrastructure required for predictive analytics, including SCADA systems, AMI/smart meters, weather feeds, asset registries, and sensor networks
  3. Describe how machine learning models are applied to load forecasting, outage prediction, storm response planning, and grid resilience analysis
  4. Evaluate how predictive analytics can improve asset health monitoring and maintenance planning for grid equipment such as transformers, lines, and substations
  5. Examine how AI tools integrate with utility operational systems such as SCADA, outage management systems (OMS), and distribution management systems (DMS)
  6. Discuss emerging forecasting and planning challenges facing utilities, including electrification, distributed energy resources (DERs), large data-center loads, and generator interconnection queue uncertainty
  7. Recognize organizational, regulatory, and cybersecurity considerations when deploying AI in utility environments
  8. Identify practical steps utilities can take to begin implementing predictive analytics and AI within grid operations

Register

Please Note: This event is being conducted entirely online. All attendees will connect and attend from their computer, one connection per purchase. For details please see our FAQ

If you are unable to attend at the scheduled date and time, we make recordings available to all attendees for 7 days after the event

REGISTER NOW FOR THIS EVENT:

Individual attendee(s)$ 995.00 each(early bird rate)
(price after July 3, 2026 is $ 1,095.00)
Volume pricing also available

Individual attendee tickets can be mixed with ticket packs for complete flexibility

Pack of 5 attendees$ 4,230.00 (15% discount)(early bird rate)
(price after July 3, 2026 is $ 4,655.00)
Pack of 10 attendees$ 7,960.00 (20% discount)(early bird rate)
(price after July 3, 2026 is $ 8,760.00)
Pack of 20 attendees$ 14,925.00 (25% discount)(early bird rate)
(price after July 3, 2026 is $ 16,425.00)

Your registration may be transferred to a member of your organization up to 24 hours in advance of the event. Cancellations must be received on or before June 12, 2026 in order to be refunded and will be subject to a US $195.00 processing fee per registrant. No refunds will be made after this date. Cancellations received after this date will create a credit of the tuition (less processing fee) good toward any other EUCI event. This credit will be good for six months from the cancellation date. In the event of non-attendance, all registration fees will be forfeited. In case of conference cancellation, EUCIs liability is limited to refund of the event registration fee only. For more information regarding administrative policies, such as complaints and refunds, please contact our offices at 303-770-8800

Agenda

Thursday, July 16, 2026
Central Time

Online

Log In & Welcome

8:45 AM

Lunch Break

12:30 - 1:30 PM

Adjourn for the day

4:30 PM

8:45 AM - 9:00 AM

Log In & Welcome

9:00 - 9:30 AM

Section 1: The Changing Grid: Why Predictive Analytics Matters

  • Growing grid complexity and electrification trends
  • Operational challenges
    • Extreme weather
    • Aging infrastructure
    • Congested systems
  • Predictive analytics use cases in grid operations
9:30 - 10:30 AM

Section 2: Data Infrastructure

  • SCADA systems and operational telemetry
  • Advanced Metering Infrastructure (AMI) and smart meter data
  • Asset registries, vegetation management data, and sensor networks
10:30 - 10:45 AM

Morning Break

10:45 - 11:45 AM

Section 3: Forecasting Electricity Demand and Grid Conditions

  • AI models for short-term and long-term demand forecasting
  • Electrification, EV adoption & DERs
  • Forecasting uncertainty and scenario modeling
    • Monte Carlo simulations and probabilistic modeling
11:45 AM - 12:30 PM

Section 4: Predicting Outages

  • Weather-driven outage modeling, outage probability and potential service disruptions
  • Identifying vulnerable types of Infrastructure
  • Improving storm response planning and crew staging
12:30 - 1:30 PM

Lunch Break

1:30 - 2:30 PM

Section 5: Predictive Asset Health Monitoring and Reliability

  • Predictive maintenance for grid equipment
    • Monitoring transformer, cable, and substation health
    • How to detect early failure signals
    • Maintenance planning and reliability performance
2:30 - 2:45 PM

Afternoon Break

2:45 - 3:30 PM

Section 6: Digital Twins/Grid Simulation

  • Introduction to digital twins
  • Types of simulation environments
    • Real-Time
    • Weather
    • DER
  • Grid resilience and outage scenarios
    • Severe Storm
    • Vegetation-Related Outages
    • Wildfire/Public Safety
  • Infrastructure upgrades and investments
  • Reliability strategies testing
3:30 - 4:00 PM

Section 7: Implementation Challenges

  • Analytics platform integration with SCADA, OMS, and DMS
  • Modeling tools and engineering workflows
    • Engineering Models
    • Operational Systems
    • Predictive Models
  • Cybersecurity and protection of critical infrastructure data (CEII)
  • Barriers to AI adoption
4:00 - 4:30 PM

Section 8: Future Forecasting Challenges

  • Forecasting Challenges and Implementation
    • Generation interconnection queue uncertainty
    • Climate volatility
    • Model limitations
  • Regulatory considerations

Instructor

Brandon Owens

Founder, AlxEnergy

Energy Infrastructure Executive, Nyserda

Brandon N. Owens is an energy infrastructure executive specializing in the integration of artificial intelligence into electricity systems and the strategic modernization of large-scale energy infrastructure. He currently serves as Vice President of Innovation at the New York State Energy Research and Development Authority (NYSERDA), where he oversees one of the largest clean energy research and commercialization portfolios in the United States. In that role he directs investment strategies across power generation and storage, hydrogen and alternative fuels, advanced building technologies, and grid modernization.

Owens previously held leadership roles at the National Renewable Energy Laboratory, General Electric, and S&P Global, advising executive teams on energy market transformation, infrastructure investment, digital system deployment, and technology commercialization. He is the founder of AIxEnergy and the author of The Wind Power Story and The Cognitive Grid, which examine how infrastructure architecture and governance shape the long-term evolution of energy systems.

Continuing Education Credits

IACET

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EUCI is accredited by the International Accreditors for Continuing Education and Training (IACET) and offers IACET CEUs for its learning events that comply with the ANSI/IACET Continuing Education and Training Standard. IACET is recognized internationally as a standard development organization and accrediting body that promotes quality of continuing education and training.

EUCI is authorized by IACET to offer 0.6 CEUs for this event

Verify our IACET accreditation

 

Who recognizes IACET Credits?

Requirements for Successful Completion of Program

Participants must log in and be in attendance for the entirety of the course to be eligible for continuing education credit.

Instructional Methods

PowerPoint presentations, diagrams, industry examples and participant discussion will be used.

CPE

Upon successful completion of this event, program participants interested in receiving CPE credits will receive a certificate of completion.

Course CPE Credits: 7.0
There is no prerequisite for this Course.
Program field of study: Specialized Knowledge
Program Level: Basic
Delivery Method: Group Internet Based
Advanced Preparation: None

CpeEUCI is registered with the National Association of State Boards of Accountancy (NASBA) as a sponsor of continuing professional education on the National Registry of CPE Sponsors. State boards of accountancy have final authority on the acceptance of individual courses for CPE credit. Complaints regarding registered sponsors may be submitted to the National Registry of CPE Sponsors through its website: www.nasbaregistry.org

CLE

Only registered attendees can request CLE credits for an EUCI course/event. Please email [email protected] prior to the course start date and list the state where you are licensed and your bar# as well as the name and date of your course/event in your request, and someone will be in contact.

Who Should Attend

This course is designed for professionals across the electric utility industry who are responsible for grid operations, forecasting, reliability, and infrastructure planning. It will be particularly valuable for individuals seeking to understand how advanced analytics and artificial intelligence can support operational decision-making.

Professionals who may benefit from attending include:

  • Grid operations and control center personnel
  • System planning and transmission planning engineers
  • Distribution planning and grid modernization teams
  • Data analytics and grid analytics professionals
  • Asset management and reliability engineers
  • Utility IT and digital transformation teams
  • Energy infrastructure consultants and advisors
  • Utility executives and managers responsible for reliability, operations, or technology strategy

The course will also be relevant for professionals from public power utilities, investor-owned utilities, cooperatives, and energy technology organizations exploring the use of predictive analytics and AI in grid operations.