4.7 Article

Mixed data-driven decision-making in demand response management: An empirical evidence from dynamic time-warping based nonparametric-matching DID

Journal

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.omega.2020.102233

Keywords

Demand response management; Data-driven algorithm; Mixed frequency data; Dynamic time warping; Nonparametric matching

Funding

  1. National Science Fund for Distinguished Young Scholars [71625003]
  2. National Key Research and Development Program of China [2016YFA0602504]
  3. National Natural Science Foundation of China [91746208, 71573016, 71403021, 71521002, 71774014, 71804010]
  4. China Postdoctoral Science Foundation [2019T120055]
  5. National Social Science Foundation of China [17ZDA065]

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Demand responses (DRs) are increasingly important in guiding scientific energy consumption behavior. This paper proposes a dynamic time-warping (DTW) clustering-based difference-in-differences (DID) method for analyzing power consumption data, which can successfully stimulate electricity-saving behavior.
As an important approach for demand-side management in the power sector, demand responses (DRs) are increasingly important in guiding scientific energy consumption behaviour. However, most related prior studies are based on small-scale experimental or survey data with a rule-based optimization algorithm; scientific DR management and strategy formulation studies driven by large-scale, hybrid frequency data are rare. This paper integrates a large-scale controlled trial, 15 min high-frequency power consumption data, and individual residents' monthly low-frequency power consumption data on a micro scale. The data-driven and causal analysis methods are combined and a machine-learning algorithm have been adopted to propose a dynamic time-warping (DTW) clustering-based difference-in-differences (DID) method. This non-parametric matching method successfully results in an intra-group randomized experiment. Empirical results reveal that cash-incentive-based DR can effectively stimulate electricity-saving behaviour, and families from the treatment groups save an average of 27.3% of their total electricity consumption in the experimental period. Further, a dynamic response process analysis indicates that a substantial discrepancy exists in the degree of demand response and the response modes of residents with different power consumption patterns. More importantly, prior empirical studies proved this method's effectiveness and f easibility: based on the DTW non-parametric matching method, the control and treatment groups can well support the parallel trend hypothesis. This work provides important implications for the accurate, efficient implementation and scientific decision-making of subsequent DR programs. (c) 2020 Elsevier Ltd. All rights reserved.

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