Article ID Journal Published Year Pages File Type
400494 International Journal of Electrical Power & Energy Systems 2013 13 Pages PDF
Abstract

Energy management in smart home environment is nowadays a crucial aspect on which technologies have been focusing on in order to save costs and minimize energy waste. This goal can be reached by means of an energy resource scheduling strategy provided by a suitable optimization technique. The proposed solution involves a class of Adaptive Critic Designs (ACDs) called Action Dependent Heuristic Dynamic Programming (ADHDP) that uses two neural networks, namely the Action and the Critic Network. This scheme is able to minimize a given Utility Function over a certain time horizon. In order to increase the performances of the ADHDP algorithm, suitable Particle Swarm Optimization (PSO) based procedures are used to pretrain the weights of the Action and the Critic networks. The results provided by PSO techniques and by a non-optimal baseline approach are also used as elements of comparison. Computer simulations have been carried out in different residential scenarios. An historical data set for solar irradiation has been used to simulate the behavior of a photovoltaic array to obtain renewable energy and the main grid is used to supply the load and charge the battery when necessary. The results confirm that the ADHDP is able to reduce the overall energy cost with respect to the baseline solution and the PSO techniques. Moreover, the validity of this method has also been shown in a more realistic context where only forecasted values of solar irradiation and electricity price can be used.

► Innovative optimal energy resource scheduling algorithm based on the ADHDP paradigm. ► Application in home management system scenarios with energy cost saving. ► The ADHDP algorithm outperforms the state-of-the art algorithms. ► Algorithm effectiveness also in presence of forecasted data.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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