Abstract

Demand response (DR) is an integral component of smart grid operations that offers the necessary flexibility to support its decarbonisation. In incentive-based DR programs, deviations from the scheduled DR capacity affect the grid’s energy balance and result in revenue losses for the DR participants. This issue aggravates with increasing DR delivery from participants such as large consumer buildings who have limited standard methods to follow for DR capacity scheduling. Load curtailment based DR capacity availability from such consumers can be forecasted reliably with the help of supervised machine learning (ML) models. This study demonstrates the development of data-driven ML based total and flexible load forecast models for a retail building. The ML model development tasks such as data pre-processing, training-testing dataset preparation, cross-validation, algorithm selection, hyperparameter optimisation, feature ranking, model selection and model evaluation are guided by deployment-centric design criteria such as reliability, computational efficiency and scalability. Based on the selected performance metrics, the day-ahead and week-ahead ML based load forecast models developed for the retail building are shown to outperform the timeseries persistence models used for benchmarking. Furthermore, the deployment of these models for DR capacity scheduling is proposed as an ML pipeline that can be realised with the help of ML workflows, computational resources as well as systems for monitoring and visualisation. The ML pipeline ensures faster, cost-effective and large-scale deployment of forecast models that support reliable DR capacity scheduling without affecting the grid’s energy balance. Minimisation of revenue losses encourages increased DR participation from large consumer buildings, ensuring further flexibility in the smart grid.

Highlights

  • The smart grids of today encourage building consumers to deliver demand response (DR) through load curtailment

  • The deployment of these models for DR capacity scheduling is proposed as an machine learning (ML) pipeline that can be realised with the help of ML workflows, computational resources as well as systems for monitoring and visualisation

  • While residential buildings are encouraged to participate in DR programs in many of the electricity markets, this study focuses only on large consumer buildings

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Summary

Introduction

The smart grids of today encourage building consumers to deliver demand response (DR) through load curtailment. DR programs are designed to utilise this distributed and flexible energy resource for managing the supply-demand balance in the grid. Such DR programs are key enablers of reliable grid operation, in scenarios where intermittent renewable energy generation and electric vehicle charging are higher. In electricity markets such as the United States of America (USA), Great. The building consumers participating in DR programs deliver DR to the grid either directly or through third-party DR aggregators [2].

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