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Artificial Intelligence for Smart Energy Grids Course

USD $59.00 USD $249.00Price range: USD $59.00 through USD $249.00

Master AI applications in smart grid technology. Learn energy demand forecasting, fault detection, and grid automation. Enroll now with NanoSchool

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Aim

This course teaches how Artificial Intelligence strengthens smart energy grids—improving forecasting, reliability, demand response, fault detection, renewable integration, and real-time operations. Participants will learn key grid concepts (generation-to-consumption, load curves, power quality, SCADA/AMI data), and then build AI-ready workflows for prediction, anomaly detection, optimization, and decision support. The course ends with a capstone where learners design an AI solution blueprint for a smart grid use case.

Program Objectives

  • Understand Smart Grid Basics: Learn how modern grids work and where intelligence is required.
  • Work with Grid Data: SCADA/AMI streams, sensor data, weather inputs, and quality challenges.
  • Forecasting Skills: Build demand and renewable generation forecasting workflows.
  • Anomaly & Fault Detection: Detect outages, equipment degradation, and power quality issues using AI.
  • Optimization & Control: Learn AI approaches for dispatch, voltage control, and demand response planning.
  • Cyber-Physical Awareness: Understand security risks and trustworthy AI needs for critical infrastructure.
  • Hands-on Outcome: Create a smart grid AI solution blueprint and implementation plan.

Program Structure

Module 1: Smart Energy Grids — What Makes Them “Smart”

  • Traditional grid vs smart grid: sensing, automation, and real-time decision making.
  • Key components: generation, transmission, distribution, consumers, prosumers.
  • Grid challenges: peak demand, outages, losses, variability, and aging assets.
  • Where AI fits: prediction, detection, optimization, and decision support.

Module 2: Grid Data Ecosystem (SCADA, AMI, IoT, Weather)

  • SCADA and substation data: what it looks like and how it is used.
  • Smart meters (AMI): interval data, consumption patterns, and privacy basics.
  • Power quality data: voltage, frequency, harmonics (overview).
  • Data issues: missing values, sensor drift, latency, and noisy measurements.

Module 3: Load Forecasting (Short-Term to Long-Term)

  • Why forecasting matters: dispatch, purchase planning, and reliability.
  • Features: weather, calendar effects, events, and demand history.
  • Models overview: regression, tree-based models, time-series ML, deep learning (conceptual).
  • Evaluation: MAE/RMSE, peak error, and operationally meaningful metrics.

Module 4: Renewable Forecasting & Integration (Solar/Wind Variability)

  • Solar/wind variability: ramp events and uncertainty.
  • Weather-driven forecasting: irradiance, cloud cover, wind speed inputs.
  • Nowcasting vs day-ahead planning: where each is used.
  • Grid integration strategies: curtailment, storage, and flexible demand (overview).

Module 5: Anomaly Detection & Fault Prediction

  • Outage detection: abnormal patterns in meter/SCADA data.
  • Transformer and feeder health monitoring: early-warning signals.
  • Unsupervised methods overview: clustering, isolation methods, autoencoders (concept).
  • Predictive maintenance workflow: alerts, triage, and field action loops.

Module 6: Demand Response & Consumer-side Intelligence

  • Demand response basics: shifting load vs shedding load.
  • Customer segmentation: identifying flexible loads and high-impact users.
  • Dynamic pricing and behavior response (overview).
  • Measuring impact: baseline modeling and verification concepts.

Module 7: Optimization & Control for Grid Operations

  • Operational goals: reliability, cost, losses, voltage stability.
  • Optimization overview: unit commitment, economic dispatch (conceptual).
  • Voltage/VAR control and distribution automation (overview).
  • AI for decision support: recommendations with constraints and operator override.

Module 8: Energy Storage Analytics (Batteries and Hybrid Systems)

  • Storage use cases: peak shaving, smoothing renewables, backup reliability.
  • State of charge/health concepts: why they matter for performance.
  • Charging/discharging strategies: rule-based vs optimization (overview).
  • Lifecycle-aware operation: balancing performance and degradation.

Module 9: Grid Security, Trustworthy AI & Governance

  • Cyber-physical risk basics: why grid AI needs strong safety controls.
  • Data privacy (AMI) and secure handling concepts.
  • Model risk: drift, adversarial signals, and reliability under rare events.
  • Monitoring: alarms, audit trails, fallback modes, and human-in-the-loop design.

Module 10: Deployment Blueprint (From Model to Operations)

  • Building an AI pipeline: ingestion → features → model → alert/forecast → dashboard.
  • Integration with operations: SCADA/EMS/DMS touchpoints (conceptual).
  • KPIs: outage duration reduction, forecast error reduction, loss reduction, peak reduction.
  • Change management: operator trust, training, and continuous improvement.

Final Project

  • Create an AI for Smart Grid Solution Blueprint for one use case.
  • Include: problem statement, data sources, model approach, evaluation metrics, deployment workflow, and monitoring plan.
  • Example projects: short-term load forecasting system, solar generation nowcasting workflow, transformer fault early warning, demand response targeting plan, storage dispatch optimization concept.

Participant Eligibility

  • Students and professionals in Electrical Engineering, Energy Systems, Data Science, AI/ML, or related fields
  • Utility professionals and grid operators exploring analytics and automation
  • Renewable energy and smart city professionals interested in grid intelligence
  • Basic understanding of electricity/power systems is helpful (beginner-friendly explanations included)

Program Outcomes

  • Smart Grid Understanding: Know where AI creates value across grid forecasting, reliability, and control.
  • AI Workflow Skills: Ability to design data pipelines for forecasting and anomaly detection.
  • Operational Thinking: Understand constraints, KPIs, and human-in-the-loop deployment needs.
  • Trust & Safety Mindset: Learn security and reliability considerations for critical infrastructure AI.
  • Portfolio Deliverable: A smart grid AI blueprint you can showcase.

Program Deliverables

  • Access to e-LMS: Full access to course content, case materials, and templates.
  • Blueprint Templates: forecasting plan template, anomaly detection checklist, deployment workflow sheet, KPI tracker.
  • Hands-on Exercises: feature design, baseline modeling, alert logic design, scenario-based planning.
  • Project Guidance: Mentor support for final blueprint completion.
  • Final Assessment: Certification after assignments + capstone submission.
  • e-Certification and e-Marksheet: Digital credentials provided upon successful completion.

Future Career Prospects

  • Smart Grid Data Analyst / Associate
  • Energy Forecasting Analyst (Load/Renewables)
  • Utility Analytics & Decision Support Associate
  • Predictive Maintenance Analyst (Grid Assets)
  • Energy AI Product / Implementation Associate

Job Opportunities

  • Utilities & DISCOMs: Grid modernization, forecasting, reliability, and analytics teams.
  • Renewable Energy Companies: Forecasting, hybrid plant operations, and grid integration teams.
  • Smart City & Energytech Firms: Grid analytics platforms, demand response solutions, and IoT energy systems.
  • Consulting & System Integrators: Smart grid implementation, data integration, and operations analytics.
  • Research Labs: Power system analytics, energy AI, and grid resilience programs.
Category

E-LMS, E-LMS+Videos, E-LMS+Videos+Live

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Certification

  • Upon successful completion of the workshop, participants will be awarded a Certificate of Completion, validating their skills and knowledge in advanced AI ethics and regulatory frameworks. This certification can be added to your LinkedIn profile or shared with employers to demonstrate your commitment to ethical AI practices.

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