Case

Forecasting of Electricity Consumption Rates

AI, ML and Predictive Analytics

Customer

Energy company Energy

Industry

Energy

Scale

10 000+

Challenge

Obtaining a short-term forecast of energy consumption for procurement planning on the Ukrainian Energy Exchange.

Solution

While analyzing Machine Learning algorithms and methods for short-term and time-bound forecasting of events, we opted for using Recurrent neural networks (RNN). RNN made possible to process a series of events in time or sequential spatial chains.
To conduct the research and set up the test RNNs, we leveraged the open-access hourly data stats on electricity consumption by New York City alongside temperature fluctuations during this period. As a result of our analysis, we managed to get an accurate forecasting for two days’ consumption rates upfront by using a 3-month range of historical data.

Result

Utilization of Recurrent neural networks (RNN) to build an effective ML-model. Customers can get short-term forecasts of energy consumption based on the analysis of historical data, with an accuracy of 96.4-99.5%.

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