基于分位数回归和机器学习的变电站检修工程造价区间预测模型OA
An Interval Prediction Model for Maintenance Engineering Cost of Substations Based on Quantile Regression and Machine Learning
日益上升的变电工程检修费用使电网公司面临巨大的市场压力,传统造价方法已无法满足当前市场需求,因此,构建智能化造价测算模型是实现电网企业现代化精细化资金管控的关键.聚焦于变电站一次设备检修工程的造价问题,在归纳整理历史工程结算数据的基础上,辨识出工程总费用的关键影响因素,并建立基于深度置信网络、遗传算法优化的BP神经网络以及灰色预测的3种确定性测算基模型.进一步,考虑工程实际中不确定因素对造价测算的影响,结合上述不同基模型建立了基于分位数回归的概率性区间测算模型.最后,采用广东省实际工程数据进行仿真测试,验证了所提模型的准确性和可靠性,可为工程实践提供有力的指导与参考.
With the increase in electricity demand,the rising maintenance costs of substation projects have put power grid companies under huge market pressure.Traditional cost methods cannot meet the needs of modern markets,so the construction of intelligent cost calculation models is the key to realize the modernization and refinement of capital management and control of power grid enterprises.Focuses on the cost estimation of primary equipment maintenance projects in substations,based on the compilation and analysis of historical project settlement data,the key influencing factors of total project costs were identified,and then,three deterministic prediction base models were established:a deep belief network,a BP neural network optimized by genetic algorithm,and a grey prediction model.Furthermore,considering the impact of uncertain factors in practical engineering scenarios on cost estimation,a probabilistic interval estimation model based on quantile regression was proposed by integrating the aforementioned base models.Finally,simulation tests using actual project data from Guangdong Province were conducted to verify the accuracy and reliability of the proposed models,which can provide strong guidance and reference for engineering practice.
黎立;庞圣养;钟荣豪;黄庆淡;张丽萍;张亚超
广东电网有限责任公司,广东 广州 510600广东电网有限责任公司湛江供电局,广东 湛江 524001福州大学 电气工程与自动化学院,福建 福州 350108广东电网有限责任公司湛江供电局,广东 湛江 524001广东电网有限责任公司,广东 广州 510600福州大学 电气工程与自动化学院,福建 福州 350108
信息技术与安全科学
变电站设备检修测算模型深度置信网络BP神经网络灰色预测分位数回归
substation equipment maintenanceprediction modeldeep belief network(DBN)BP neural network(BPNN)grey predictionquantile regression
《电气传动》 2026 (6)
41-48,8
广东电网有限责任公司科技项目(030800KC23040012)
评论