2019
DOI: 10.3390/pr7050310
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Designing, Developing and Validating a Forecasting Method for the Month Ahead Hourly Electricity Consumption in the Case of Medium Industrial Consumers

Abstract: An accurate forecast of the electricity consumption is particularly important to both consumers and system operators. The purpose of this study is to develop a forecasting method that provides such an accurate forecast of the month-ahead hourly electricity consumption in the case of medium industrial consumers, therefore assuring an intelligent energy management and an efficient economic scheduling of their resources, having the possibility to negotiate in advance appropriate billing tariffs relying on accurat… Show more

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Cited by 13 publications
(9 citation statements)
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References 38 publications
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“…Another previous work of one of the authors of the current paper targeted the forecasting of the consumed electricity for a whole month on an hourly resolution, in the case of an industrial consumer [31]. Even if the profiles of the two electricity consumers differ, we investigated the approach consisting of using the ANNs based on the NARX model for obtaining first a forecast of the total daily aggregated electricity consumption that is being processed further using LSTM ANNs for refining the forecasted aggregated daily electricity consumption for a whole month on an hourly resolution.…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Another previous work of one of the authors of the current paper targeted the forecasting of the consumed electricity for a whole month on an hourly resolution, in the case of an industrial consumer [31]. Even if the profiles of the two electricity consumers differ, we investigated the approach consisting of using the ANNs based on the NARX model for obtaining first a forecast of the total daily aggregated electricity consumption that is being processed further using LSTM ANNs for refining the forecasted aggregated daily electricity consumption for a whole month on an hourly resolution.…”
Section: Methodsmentioning
confidence: 99%
“…However, even if when we devised our forecasting approach, we remarked that in this particular case, the two datasets given by the contractor did not contain such type of values, we designed this step to make sure that the devised forecasting method can be applied for a wider range of commercial center-type consumer cases, similar to the one for which we conducted the current study and therefore to be able to generalize the devised forecasting approach. In order to solve the issues regarding the potential missing or abnormal values, we designed this step to apply a gap-filling approach that has proven its effectiveness when applied in previous studies, some of them being conducted within our research team [30][31][32]34], the method being based on a linear interpolation approach.…”
Section: Stage I: Acquiring and Preprocessing The Datasetsmentioning
confidence: 99%
“…NARX is a neural network with recurrent dynamic behavior [38][39][40] that has been effectively used for time series problems estimation. The main difference between MLP and NARX is that NARX allows a weighted feedback connection between layers of neurons.…”
Section: Narx Neural Networkmentioning
confidence: 99%
“…The NARX neural network can be constructed into one of two architectures [31], the parallel architecture (namely close-loop architecture), and the series-parallel architecture (namely, open-loop architecture), see Figure 3. NARX is a neural network with recurrent dynamic behavior [38][39][40] that has been effectively used for time series problems estimation. The main difference between MLP and NARX is that NARX allows a weighted feedback connection between layers of neurons.…”
Section: Narx Neural Networkmentioning
confidence: 99%
“…As a tool for recognition and classification, an artificial neural network is a model abstracted based on neural network theory that originates from the field of physiology. Such models can be used for arbitrary data clustering and pattern classification and are widely used for tasks such as pattern recognition [27][28][29]. Specifically, a probabilistic neural network (PNN) is an artificial neural network with the advantages of a fast training speed, simple parameter adjustment, and good classification performance [30].…”
Section: Introductionmentioning
confidence: 99%