基于优化供电配置与电网需求响应的水产养殖智能监测系统研究
Research on an Intelligent Monitoring System for Aquaculture Based on Optimized Power Supply Configuration and Grid Demand Response
摘要: 在电力体制改革的背景下,针对水产养殖行业中日益增长的电力需求与环境管理挑战,研究构建了一套基于优化供电配置与电网需求响应的水产养殖智能监测系统。该系统利用物联网技术实现对水质参数与电力使用的实时监测与分析,以动态协调水产养殖供需关系,促使能源资源的高效利用。研究采用多元化的数据收集方法,包括文献调研、案例分析及实地考察,系统分析了智能监测系统对养殖效率提升及电网经济效益优化的显著影响。研究结果表明,该智能监测系统有效降低了养殖运营成本,优化了饲料管理,提升了水产养殖的生态友好性与可持续发展能力。同时,电网的优化配置与需求响应机制相结合,确保了养殖用电的稳定性,促进了电力资源的合理配置。
Abstract: In the context of power system reform, in response to the increasing power demand and environ- mental management challenges in the aquaculture industry, a set of intelligent monitoring system for aquaculture based on optimized power supply configuration and grid demand response was developed. This system utilizes Internet of Things technology to achieve real-time monitoring and analysis of water quality parameters and power usage, dynamically coordinating the supply and demand relationship in aquaculture and promoting the efficient utilization of energy resources. The study adopted diversified data collection methods, including literature research, case analysis, and field investigation, to systematically analyze the significant impact of the intelligent monitoring system on the improvement of aquaculture efficiency and the optimization of grid economic benefits. The research results show that this intelligent monitoring system effectively reduces operating costs in aquaculture, optimizes feed management, and enhances the ecological friendliness and sustainable development capabilities of aquaculture. At the same time, the combination of optimized power supply configuration and demand response mechanism of the grid ensures the stability of aquaculture power supply and promotes the rational allocation of power resources.
文章引用:孔祥瑞, 成杨, 冯仁杰, 郭栩畅. 基于优化供电配置与电网需求响应的水产养殖智能监测系统研究[J]. 电力与能源进展, 2026, 14(2): 149-156. https://doi.org/10.12677/aepe.2026.142016

参考文献

[1] 刘波. 面向水产养殖的异构新能源系统能量控制设计研究[D]: [硕士学位论文]. 武汉: 华中农业大学, 2025.
[2] 张雅宁. XZ供电公司电网规划管理优化研究[D]: [硕士学位论文]. 太原: 山西大学, 2021.
[3] Wu, Y., Duan, Y., Wei, Y., An, D. and Liu, J. (2022) Application of Intelligent and Unmanned Equipment in Aquaculture: A Review. Computers and Electronics in Agriculture, 199, Article ID: 107201. [Google Scholar] [CrossRef
[4] 邓棚文, 管毅敏. 智能化水产养殖工程中溶解氧在线监测与精准调控系统研究[J]. 江西农业, 2026(3): 160-162.
[5] 杨琛, 高鑫, 戴莹宣, 许竞翔. 基于IMOMSA的水产养殖微电网多目标优化调度[J]. 上海海洋大学学报, 2026, 35(2): 588-600.
[6] Nie, Y., Yang, H.N., Qu, K., Zhang, L.B. and Du, J.Y. (2025) Research on the Development and Application of an Intelligent Aquaculture System. Information Resources Management Journal, 38, 1-20.
[7] 蒋静. 稻虾共作物联网应用研究——以南通如皋为例[D]: [硕士学位论文]. 南京: 南京林业大学, 2024.
[8] 杨东旭, 张胜茂, 戴阳, 吴祖立, 唐峰华, 樊伟. 边缘计算技术及其在渔业智能化装备中的应用浅析[J]. 渔业现代化, 2025, 52(4): 1-14.
[9] 姜跃峰, 顾成威, 朱广银. 人工智能在大口黑鲈工厂化养殖中的应用[J]. 水产养殖, 2025, 46(11): 35-36.
[10] 洪玉芳. 水产养殖的管理措施[J]. 宁夏农林科技, 2013, 54(2): 64-65.
[11] 王伯东, 姚晓宏. 水产养殖管理技术探析[J]. 城市建设理论研究(电子版), 2011(36): 1-5.
[12] 于忠诚. 水产养殖后期管理措施[J]. 水产养殖, 2009, 30(11): 37.
[13] 申芝郁. 基于电动汽车需求响应的微电网优化配置[D]: [硕士学位论文]. 呼和浩特: 内蒙古大学, 2023.
[14] 卜世杰. 水产养殖环境智能监测系统的开发[D]: [硕士学位论文]. 兰州: 兰州交通大学, 2016.
[15] 王绍卜. 基于ZigBee的水产养殖智能监测系统设计[J]. 微型机与应用, 2013, 32(7): 16-19.
[16] 邢俊, 李庆武, 何飞佳, 等. 基于智能视觉物联网的水产养殖监测系统[J]. 应用科技, 2017, 44(5): 46-51.