Robust Assessment Method for Hosting Capacity of Distribution Network in Mountainous Areas for Distributed Photovoltaics
Abstract
:1. Introduction
- The above literature [14,15,16,17,18,19,20] did not further analyze the impact of distributed PV output uncertainty on mountain distribution networks. Influenced by weather and geography, the output curve of distributed PV is characterized by disorder and high volatility. Evaluating the hosting capacity of the distribution network without considering the uncertainty may lead to an overestimation of the results, resulting in low power quality and safety hazards in practical applications;
- The above literature [10,11,12,13,14,15,16,17,18,19,20] does not apply SOPs to further improve the distributed PVHC of the distribution network. The SOPs have the ability to flexibly adjust the spatial tidal current and can be used to replace the traditional contact switches in the distribution network. Through the flexible contact of SOPs, supply zones that originally have no power interaction start to interconnect. Between the interconnected supply zones, the stochastic currents caused by source–load uncertainty are effectively adjusted by the SOP, and the distributed PVs and loads are able to balance and complement each other. Obviously, SOP has a positive effect on the distribution network to accommodate more distributed PVs.
2. Characteristics of a Mountainous Distribution Network
2.1. Traditional Mountain Distribution Networks
2.2. Flexible and Interconnected Mountain Distribution Grids
3. Formulation of the Problem
3.1. Deterministic Assessment Model
3.1.1. Objective Function
3.1.2. Restrictive Condition
3.2. Robust Evaluation Model
3.2.1. Distributed PV Uncertainty Carving
3.2.2. Two-Layer Robust Evaluation Model
3.3. Solution Method
4. Calculus Analysis
4.1. Parameterization
4.2. Robust Model Evaluation Results and Analysis
4.3. Impact of E-SOP on Mountainous Distribution Grids
4.4. Impact of Robust Budgets on Hosting Capacity
4.5. Applicability of Different Distribution Networks
5. Conclusions
- (1)
- E-SOP’s temporal and spatial trend flexibility makes it possible to alleviate the problem of low voltage at the end of the mountainous distribution network and change the unidirectional trend into bidirectional trend, thus improving the hosting capacity of distributed PV in the distribution network. The case study of the 33-node mountainous flexible distribution network of IEEE shows that the introduction of E-SOP further alleviates the problem of low voltage at the end-nodes of the mountainous distribution network caused by the long power supply radius. This means that there are fewer problems. Meanwhile, the evaluation results are improved when E-SOP is taken into account compared with when it is not taken into account, whether it is a deterministic evaluation model, a traditional method, or the method proposed in this paper.
- (2)
- The method proposed in this paper analyzes the distributed PV output uncertainty model on the basis of the deterministic assessment model, and obtains a two-layer robust assessment model. An example analysis of the IEEE 33-node mountainous flexible distribution network shows that the two-layer robust model developed by the method proposed in this paper takes into account the uncertainty variables to minimize the distribution network acceptance of the distributed PV capacity, and the results obtained have good robustness and accuracy.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Deterministic Assessment Model | Two-Layer Robust Model | Traditional Methods | |
---|---|---|---|
With E-SOP | 10.211 MW | 9.004 MW | 9.502 MW |
Without E-SOP | 10.122 MW | 8.915 MW | 9.402 MW |
Deterministic Assessment Model | Two-Layer Robust Model | Traditional Methods | |
---|---|---|---|
33-node distribution network | 14.37 s | 16.21 s | 11.84 s |
69-node distribution network | 18.11 s | 30.06 s | 12.04 s |
135-node distribution network | 23.32 s | 30.79 s | 14.26 s |
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Zheng, Y.; Zhou, K.; Yang, Y.; Diao, H.; Hua, L.; Wang, R.; Liu, K.; Guo, Q. Robust Assessment Method for Hosting Capacity of Distribution Network in Mountainous Areas for Distributed Photovoltaics. Energies 2025, 18, 2394. https://doi.org/10.3390/en18092394
Zheng Y, Zhou K, Yang Y, Diao H, Hua L, Wang R, Liu K, Guo Q. Robust Assessment Method for Hosting Capacity of Distribution Network in Mountainous Areas for Distributed Photovoltaics. Energies. 2025; 18(9):2394. https://doi.org/10.3390/en18092394
Chicago/Turabian StyleZheng, Youzhuo, Kun Zhou, Yekui Yang, Hanbin Diao, Long Hua, Renzhi Wang, Kang Liu, and Qi Guo. 2025. "Robust Assessment Method for Hosting Capacity of Distribution Network in Mountainous Areas for Distributed Photovoltaics" Energies 18, no. 9: 2394. https://doi.org/10.3390/en18092394
APA StyleZheng, Y., Zhou, K., Yang, Y., Diao, H., Hua, L., Wang, R., Liu, K., & Guo, Q. (2025). Robust Assessment Method for Hosting Capacity of Distribution Network in Mountainous Areas for Distributed Photovoltaics. Energies, 18(9), 2394. https://doi.org/10.3390/en18092394