当前受供给侧结构性改革和环境治理不断推进的影响,钢铁、有色等传统高耗能行业的“去产能”“环保治理”等行动不断加大力度,由于缺乏有效的监测手段,在实际执行中往往存在不到位的情况。本文以钢铁行业为例,基于钢铁企业用电负荷大数据构建非侵入式监测方法,通过小波包分解和快速傅里叶分解结合,分解出主要生产工艺的负荷曲线,实现对炼铁、炼钢、轧钢主要工艺的有效监测。同时,利用典型环节用电量测算企业钢铁产量,通过与实际产量对比,为监管钢铁等重点工业用户去产能实施提供技术手段。
At present,due to the impact of economic development and environmental constraints,the “de-capacity” and “environmental protection” actions of traditional high-energy-consuming industries such as steel and non-ferrous metals have been intensified. Due to the lack of effective monitoring techniques,In practice,there is often a phenomenon that is not in place. This paper uses the power load big data of key industrial users such as steel,through the combination of wavelet packet decomposition and fast Fourier decomposition,to construct a non-intrusive monitoring method to achieve key production process monitoring for high energy-consuming and high-pollution industrial enterprises. Taking a steel plant in Henan as an example,using the constructed non-intrusive monitoring method,the load curve of the main production process is decomposed to achieve effective monitoring of the main processes of iron making,steel making and steel rolling. At the same time,through the typical link power capacity measurement,the company’s steel production capacity is obtained,providing technical support for the supervision of key industrial users such as steel.
Keywords: | Steel IndustryNon-invasive MonitoringPower Big DataWavelet Packet DecompositionFast Fourier Decomposition |