Search Results for author: Wenchuan Wu

Found 18 papers, 2 papers with code

Distribution Locational Marginal Emission for Carbon Alleviation in Distribution Networks: Formulation, Calculation, and Implication

no code implementations12 Feb 2024 Linwei Sang, Yinliang Xu, Hongbin Sun, Qiuwei Wu, Wenchuan Wu

This paper establishes the distribution locational marginal emission (DLME) to calculate the marginal change of emission from the marginal change of both active and reactive load demand for incentivizing carbon alleviation.

Scheduling

Multi-Interval Rolling-Window Joint Dispatch and Pricing of Energy and Reserve under Uncertainty

no code implementations8 Aug 2023 Jiantao Shi, Ye Guo, Wenchuan Wu, Hongbin Sun

In this paper, the intra-day multi-interval rolling-window joint dispatch and pricing of energy and reserve is studied under increasing volatile and uncertain renewable generations.

A Dynamic Equivalent Energy Storage Model of Natural Gas Networks for Joint Optimal Dispatch of Electricity-Gas Systems

no code implementations24 Jul 2023 Siyuan Wang, Wenchuan Wu, Chenhui Lin, Binbin Chen

The development of energy conversion techniques enhances the coupling between the gas network and power system.

Safety-aware Semi-end-to-end Coordinated Decision Model for Voltage Regulation in Active Distribution Network

1 code implementation24 May 2023 Linwei Sang, Yinliang Xu, Huan Long, Wenchuan Wu

Based on the regulation loss and prediction errors, this paper proposes the hybrid loss and hybrid stochastic gradient descent algorithm to back-propagate the gradients of the hybrid loss with respect to multiple predictions for enhancing decision quality.

Decision Making

A Spatio-temporal Decomposition Method for the Coordinated Economic Dispatch of Integrated Transmission and Distribution Grids

no code implementations17 Mar 2023 Qi Wang, Wenchuan Wu, Chenhui Lin, Bin Wang

In the spatial dimension, a multi-parametric programming projection based spatial decomposition algorithm is developed to coordinate the ED problems of TG and DNs in a distributed manner.

Computational Efficiency

Parallel Computing Based Solution for Reliability-Constrained Distribution Network Planning

no code implementations9 Mar 2023 Yaqi Sun, Wenchuan Wu, Yi Lin, Hai Huang, Hao Chen

The main goal of distribution network (DN) expansion planning is essentially to achieve minimal investment constrained with specified reliability requirements.

Joint Chance-Constrained Economic Dispatch Involving Joint Optimization of Frequency-related Inverter Control and Regulation Reserve Allocation

no code implementations7 Mar 2023 Ye Tian, Zhengshuo Li, Wenchuan Wu, Miao Fan

The issues of uncertainty and frequency security could become significantly serious in power systems with the high penetration of volatile inverter-based renewables (IBRs).

Optimal Allocation of Virtual Inertia and Droop Control for Renewable Energy in Stochastic Look-Ahead Power Dispatch

no code implementations30 Nov 2022 Yukang Shen, Wenchuan Wu, Shumin Sun, Bin Wang

To stabilize the frequency of the renewable energy sources (RESs) dominated power system, frequency supports are required by RESs through virtual inertia emulation or droop control in the newly published grid codes.

Scheduling

An Efficient Optimal Energy Flow Model for Integrated Energy Systems Based on Energy Circuit Modeling in the Frequency Domain

1 code implementation26 Jun 2022 Binbin Chen, Wenchuan Wu, Qinglai Guo, Hongbin Sun

First, an energy circuit method (ECM) that algebraizes the PDEs of NGNs and DHNs in the frequency domain is introduced.

Energy Circuit-based Integrated Energy Management System: Theory, Implementation, and Application

no code implementations26 Jun 2022 Binbin Chen, Qinglai Guo, Guanxiong Yin, Bin Wang, Zhaoguang Pan, Yuwei Chen, Wenchuan Wu, Hongbin Sun

Integrated energy systems (IESs), in which various energy flows are interconnected and coordinated to release potential flexibility for more efficient and secure operation, have drawn increasing attention in recent years.

energy management Management

A Scenario-oriented Approach to Multi-period Energy-Reserve Joint Procurement and Pricing

no code implementations24 Sep 2021 Jiantao Shi, Ye Guo, Lang Tong, Wenchuan Wu, Hongbin Sun

In [1], a single-period co-optimization model of energy and reserve is considered to better illustrate the properties of the co-optimization model and the associated market mechanism.

A Scenario-oriented Approach to Energy-Reserve Joint Procurement and Pricing

no code implementations16 Jul 2021 Jiantao Shi, Ye Guo, Lang Tong, Wenchuan Wu, Hongbin Sun

We consider some crucial problems related to the secure and reliable operation of power systems with high renewable penetrations: how much reserve should we procure, how should reserve resources distribute among different locations, and how should we price reserve and charge uncertainty sources.

Bi-level Off-policy Reinforcement Learning for Volt/VAR Control Involving Continuous and Discrete Devices

no code implementations13 Apr 2021 Haotian Liu, Wenchuan Wu

Such VCC is formulated as a two-timescale optimization problem to jointly optimize FTCDs and STDDs in ADNs.

Reinforcement Learning (RL)

Data-driven Model Predictive Control Method for DFIG-based Wind Farm to Provide Primary Frequency Regulation Service

no code implementations7 Dec 2020 Zizhen Guo, Wenchuan Wu

As wind power penetration increases, the wind farms are required by newly released grid codes to provide frequency regulation service.

Dimensionality Reduction Model Predictive Control

Data-driven Inverter-based Volt/VAr Control for Partially Observable Distribution Networks

no code implementations31 Jul 2020 Tong Xu, Wenchuan Wu, Yiwen Hong, Junjie Yu, Fazhong Zhang

To provide a practical Volt/Var control (VVC) strategy for such networks, a data-driven VVC method is proposed in this paper.

regression

Online Multi-agent Reinforcement Learning for Decentralized Inverter-based Volt-VAR Control

no code implementations23 Jun 2020 Haotian Liu, Wenchuan Wu

In this paper, we propose an online multi-agent reinforcement learning and decentralized control framework (OLDC) for VVC.

Multi-agent Reinforcement Learning reinforcement-learning +1

Two-stage Deep Reinforcement Learning for Inverter-based Volt-VAR Control in Active Distribution Networks

no code implementations20 May 2020 Haotian Liu, Wenchuan Wu

In the sequential online stage, we transfer the offline agent safely as the online agent to perform continuous learning and controlling online with significantly improved safety and efficiency.

reinforcement-learning Reinforcement Learning (RL)

Human-like machine thinking: Language guided imagination

no code implementations18 May 2019 Feng Qi, Wenchuan Wu

Human thinking requires the brain to understand the meaning of language expression and to properly organize the thoughts flow using the language.

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