Optimal Scheduling of the Active Distribution Network with Microgrids Considering Multi-Timescale Source-Load Forecasting

Author:

Lu Jiangang1,Du Hongwei23,Zhao Ruifeng1,Li Haobin1,Tan Yonggui23,Guo Wenxin1

Affiliation:

1. Power Dispatch and Control Center of Guangdong Power Grid Co., Ltd., Guangzhou 510060, China

2. NARI Group Co., Ltd., Nanjing 210037, China

3. NARI Technology Nanjing Control Systems Co., Ltd., Nanjing 211106, China

Abstract

Integrating distributed generations (DGs) into distribution networks poses a challenge for active distribution networks (ADNs) when managing distributed resources for optimal scheduling. To address this issue, this paper proposes a day-ahead and intra-day scheduling approach based on a multi-microgrid system. It starts with a CNN-LSTM-based generation and load forecasting model to address the impact of generation and load uncertainties on the power grid scheduling. Then, an optimal day-ahead and intra-day scheduling framework for ADN and microgrids is introduced using predicted generation and load information. The day-ahead scheduling is responsible for optimizing the power interactions between ADN and the connected microgrids, while intra-day scheduling focuses on minimizing the operational costs of microgrids. The effectiveness of the proposed scheduling strategy is verified via case studies performed on a modified IEEE 33-node ADN. The results show that the network loss of ADN and the operation costs of microgrids are reduced by 17.31% and 32.81% after the microgrid is integrated into the ADN. The peak-valley difference in microgrids decreased by 13.12%. The simulation shows a significant reduction in operational costs and load fluctuations after implementing the proposed day-ahead and intra-day scheduling strategy. The seamless coordination between the day-ahead scheduling and intra-day scheduling allows for the precise adjustment of transfer power, alleviating peak load demand and minimizing network losses in the ADN system.

Funder

Micro-service architecture of dynamic and scalable distribution network cloud platform and cloud-side collaborative application technology and demonstration

Publisher

MDPI AG

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