With the rapid development of new power systems mainly based on renewable energy resources, coupled with the increase of seasonal loads, the problems of heavy/overload transformer during peak summer, winter and major holidays are becoming more and more serious every year, which seriously affects the service life of transformers and the reliability of power supply. One of the important means to solve the transformer heavy/overload problem is to adjust and transfer the load in advance by load prediction, so it is crucial to achieve accurate prediction of transformer load. In this paper, A short-term load prediction model based on long and short-term memory recurrent neural network (LSTM) with deep learning is built to predict the load level of transformers in the coming week using the historical load of transformers, holiday information and meteorological data as input. The accuracy of transformer load prediction is verified on Matlab using two 35kV transformers with a capacity of 5000kVA as an example.
KEYWORDS: Data modeling, Systems modeling, Standards development, Signal processing, Signal detection, Information technology, Information fusion, Human-machine interfaces, Data processing, Computer programming
Common information model (CIM) is an important part of IEC61970/IEC61968 series standard and grid data standard. In this paper, the method of analyzing and detecting the power grid model file compiled by CIM/XML model standard is studied. The data mining of CIM file is carried out by the structure of Resource Description Framework (RDF) data. Based on the XML files, the CIM files are completely expressed and the CIM/XML model file is parsed. According to the IEC61970/IEC61968 standard, the input CIM model data streams are effectively detected. It depends on whether they conform to the grid standard and have smooth interoperability.
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