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Suggesting a Stochastic Fractal Search Paradigm in Combination with Artificial Neural Network for Early Prediction of Cooling Load in Residential Buildings

Energies 2021 35 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Hossein Moayedi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi, Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi Amir Mosavi, Amir Mosavi

Summary

Researchers developed a hybrid model combining artificial neural networks with a stochastic fractal search algorithm (SFS-ANN) for early prediction of building cooling loads, finding it outperformed benchmark optimization algorithms and offering a practical tool for energy-efficient residential building design.

Body Systems

Early prediction of thermal loads plays an essential role in analyzing energy-efficient buildings’ energy performance. On the other hand, stochastic algorithms have recently shown high proficiency in dealing with this issue. These are the reasons that this study is dedicated to evaluating an innovative hybrid method for predicting the cooling load (CL) in buildings with residential usage. The proposed model is a combination of artificial neural networks and stochastic fractal search (SFS–ANNs). Two benchmark algorithms, namely the grasshopper optimization algorithm (GOA) and firefly algorithm (FA) are also considered to be compared with the SFS. The non-linear effect of eight independent factors on the CL is analyzed using each model’s optimal structure. Evaluation of the results outlined that all three metaheuristic algorithms (with more than 90% correlation) can adequately optimize the ANN. In this regard, this tool’s prediction error declined by nearly 23%, 18%, and 36% by applying the GOA, FA, and SFS techniques. Moreover, all used accuracy criteria indicated the superiority of the SFS over the benchmark schemes. Therefore, it is inferred that utilizing the SFS along with ANN provides a reliable hybrid model for the early prediction of CL.

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