Forecasting Energy Consumption of a Mining Plant Using Artificial Neural Networks
Annotatsiya
This study addresses the issue of forecasting active and reactive power consumption at a mining and processing plant, aiming to improve the efficiency of energy resource management. It explores existing approaches to modelling and analysing electricity consumption, including methods for forecasting active power to accurately assess the energy needs of industrial enterprises, as well as methods for estimating reactive power required to compensate for reactive components and stabilize grid parameters. Using real electricity consumption data from an industrial enterprise, the completed training and research demonstrates the potential to forecast energy consumption for the next 24 to 48 hours using artificial neural networks with nonlinear autoregressive architecture. It also provides rationale for pre-processing initial data to enhance forecast accuracy. These approaches contribute to reducing capital and operating costs, improving the reliability and stability of energy systems, and optimising operating efficiency.
Hali tarjima qilinmagan