Low-Carbon Dispatch Method for Active Distribution Network Based on Carbon Emission Flow Theory
Abstract
1. Introduction
- (1)
- Based on the CEF theory, the dynamic carbon emission intensity calculation model of gas units, energy storage equipment, and a lossy ADN is established to realize the carbon emission measurement of each link. On this basis, a low-carbon dispatch model is proposed for distributed sustainable energy access scenarios, taking into account operational safety and low-carbon benefits.
- (2)
- The ADN low-carbon dispatch problem is modeled as a Markov decision-making process, which takes into account the uncertainties caused by carbon emission intensity changes in the main network, load changes, and changes in distributed sustainable energy generation, and improves the SAC algorithm of deep reinforcement learning by adopting a Gaussian distribution reward function sampling strategy, which effectively improves the stability of the training process of the intelligence and the algorithm performance.
2. Distributed Power Modeling for ADNs
2.1. Gas Unit Model
2.2. Energy Storage Equipment Model
3. Carbon Emission Flow Theory for ADNs
3.1. Calculation of Carbon Emission Distribution in ADNs
3.2. Dynamic Effects of Distributed Power Sources on Nodal Carbon Potentials
4. Low-Carbon Dispatch Model for ADN
4.1. The Objective Function
4.2. The Constraints
- (1)
- Power flow constraintswhere Pi(t) and Qi(t) denote the active and reactive power of node i at time t, respectively; Ui(t) and Uj(t) represent the voltage values of node i and node j at time t, respectively; Gi,j(t) and Bi,j(t) denote the conductance and conductance of node i and j, respectively; and θi,j(t) denotes the phase angle difference of node i and j.
- (2)
- Security constraintswhere and are the node voltage upper and voltage lower limits; (t) is the line i-j current squared; (t) is the thermal capacity limit of the line; Pi,j(t) and Qi,j(t) denote the active and reactive power of line i-j; and denote the maximum power limit of the line.
- (3)
- Stabilization constraintsNodal voltage deviation is an important indicator of power quality in distribution networks [28]. We define the maximum deviation voltage ratio in distribution networks aswhere Ui(t) denotes the voltage value of node i at time t; Ui,ref is the reference voltage value of node i. In order to ensure the voltage stability of the distribution network, the voltage deviation needs to be constrained within the ideal range:
- (4)
- Unit operating constraintsThe operation of gas-fired generating units and energy storage devices satisfies the operational constraints of Equations (1)–(5) in Section 1.
5. Solving Low-Carbon Dispatch Model for ADN Based on Improved SAC
5.1. Markov Decision Process Framework
- (1)
- is the state space that supports all gas units and energy storage devices in the distribution network to make action decisions. The variables in the state space are all continuous values.
- (2)
- is the action space. During the time period t, the intelligent body outputs the optimal action according to the environmental changes. The action at contains the unit output and the operating status of the energy storage device:where (t) denotes the active power of KM gas units at moment t and (t) denotes the charging power or discharging power of M energy storage devices.
- (3)
- p is the state transfer probability, which denotes the probability density of the current state st to move to the next state st+1 under action at. The transition process from st to st+1 can be expressed aswhere (t) and (t) are the action values in the current state and wt denotes the environmental randomness.
- (4)
- r denotes the reward returned from the environment for taking action at during each round of state transfer:where ET(t) is the single-step carbon emission cost during the dispatch cycle.
5.2. Improvement of Soft Actor–Critic Algorithm
- (1)
- Actor Network
- (2)
- Critic Networks
| Algorithm 1 Solving dispatch model based on improved SAC |
| 1: Initialize: |
| Policy network πϕ |
| Two Q networks and . |
| Target Q networks and . |
| Replay buffer . |
| 2: for each environment step do: |
| 3: Sample action at∼πϕ(⋅∣st) from the policy at state st. |
| 4: Execute action at, receive reward and next state st+1. |
| 5: Store transition (st, at, , st+1) in . |
| end for |
| 6: for each update step do: |
| 7: Randomly sample a batch of transitions (st, at, , st+1) from . |
| 8: Compute target value according to Equation (37). |
| 9: Update critic networks according to Equation (38): |
| 10: Update policy network according to Equation (35): |
| 11: Adjust temperature parameter α according to Equation (36): |
| 12: Update target Q networks: |
| end for |
| 13: Output: Learned policy network parameters |
6. Case Simulation
6.1. Experimental Configuration
6.2. Evaluation of the Training Process
6.3. Scheduling Result Performance
6.4. Comparison of Model-Solving Algorithms
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Type | Parameters | Value |
|---|---|---|
| Wind power units | 250 kW | |
| Photovoltaic array | 250 kW | |
| Gas units | 300 kW | |
| / | −60/60 kW/15 min | |
| Energy storage devices | 0.85 | |
| / | −300/300 kW | |
| 20% | ||
| 85% | ||
| Ncycle | 8000 | |
| The main net | 7% |
| Parameters | Value |
|---|---|
| Learning rate of Actor | 1 × 10−5 |
| Learning rate of Critic | 1 × 10−5 |
| Decay ratio of learning rate | 0.5 |
| Batch size | 256 |
| Epoch | 10,000 |
| Discount factor | 0.97 |
| Parameter update speed | 0.01 |
| Temperature parameter | 0.01 |
| Buffer size | 1 × 104 |
| Buffer initial fill | 2560 |
| Updates frequency | 10 |
| Method | Proposed Method | SAC | PPO | DDPG |
|---|---|---|---|---|
| Carbon Emission (kgCO2) | 50,325 | 53,749 | 54,051 | 57,668 |
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© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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Bian, J.; Wang, Y.; Dang, Z.; Xiang, T.; Gan, Z.; Yang, T. Low-Carbon Dispatch Method for Active Distribution Network Based on Carbon Emission Flow Theory. Energies 2024, 17, 5610. https://doi.org/10.3390/en17225610
Bian J, Wang Y, Dang Z, Xiang T, Gan Z, Yang T. Low-Carbon Dispatch Method for Active Distribution Network Based on Carbon Emission Flow Theory. Energies. 2024; 17(22):5610. https://doi.org/10.3390/en17225610
Chicago/Turabian StyleBian, Jiang, Yang Wang, Zhaoshuai Dang, Tianchun Xiang, Zhiyong Gan, and Ting Yang. 2024. "Low-Carbon Dispatch Method for Active Distribution Network Based on Carbon Emission Flow Theory" Energies 17, no. 22: 5610. https://doi.org/10.3390/en17225610
APA StyleBian, J., Wang, Y., Dang, Z., Xiang, T., Gan, Z., & Yang, T. (2024). Low-Carbon Dispatch Method for Active Distribution Network Based on Carbon Emission Flow Theory. Energies, 17(22), 5610. https://doi.org/10.3390/en17225610

