4.8 Article

Leveraging hybrid probabilistic multi-objective evolutionary algorithm for dynamic tariff design

Journal

APPLIED ENERGY
Volume 342, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.apenergy.2023.121123

Keywords

Dynamic tariff design; Stackelberg game; Hybrid probabilistic multi-objective; evolutionary algorithm; Demand response; Random forest

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Dynamic tariffs are essential in demand response as they help smooth power consumption, reduce generation capacity requirement, and carbon emissions. However, existing works often overlook important factors such as user responses to tariffs when designing them. To address this issue, this paper proposes a new dynamic tariff design method that considers user responses to tariff changes. The method utilizes non-intrusive load monitoring technique to acquire information on rated power and user preferences for each appliance, which is then used to quantify user comfort or discomfort based on their appliance usage habits. A bi-level Stackelberg game model is then built to design optimal dynamic tariffs and simulate the impact of tariff changes on users' demand response plans. The results show that the proposed model generally outperforms benchmark methods in achieving peak shaving, low carbon emission, and user satisfaction.
Dynamic tariffs play an important role in demand response, contributing to smoothing power consumption , reducing generation capacity requirement and carbon emission. However, in the existing works, tariffs are usually designed without comprehensive consideration, such as potential user responses to tariffs. Thus, assuming an electricity trading market contains a utility company and multiple residential users, a dynamic tariff design method is proposed in this paper, considering user responses to tariff changes. Leveraging the non -intrusive load monitoring technique, rated power and user preference features for each appliance are acquired by the utility company to quantify user comfort (discomfort) based on derived user appliance usage habits. Then, a bi-level Stackelberg game model is built on the supply side for designing optimal dynamic tariffs and imitating the influence of tariff changes on DR plans for users. The upper level represents the utility company, trying to maximize utility profit, social welfare and carbon emission reduction. While the lower level represents users, aiming to minimize electricity bills and user discomfort. By solving such an optimization problem with multiple objectives, a novel hybrid probabilistic multi-objective evolutionary algorithm balancing evolutionary efficiency and stability is applied where random forest is adopted to boost performance. The proposed model is benchmarked with two state-of-the-art pricing methods and validated on a publicly accessible REFIT dataset, where low-rate power measurements are collected from real houses in the UK. The experimental results show the proposed model generally outperforms benchmarks on dynamic tariff design in achieving peak-shaving and low carbon emission while preserving user satisfaction. Furthermore, a case study is implemented, which verifies the necessity of various objectives employed in the proposed method.

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