9 research outputs found

    An innovative metaheuristic strategy for solar energy management through a neural networks framework

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    Proper management of solar energy as an effective renewable source is of high importance toward sustainable energy harvesting. This paper offers a novel sophisticated method for predicting solar irradiance (SIr) from environmental conditions. To this end, an efficient metaheuristic technique, namely electromagnetic field optimization (EFO), is employed for optimizing a neural network. This algorithm quickly mines a publicly available dataset for nonlinearly tuning the network parameters. To suggest an optimal configuration, five influential parameters of the EFO are optimized by an extensive trial and error practice. Analyzing the results showed that the proposed model can learn the SIr pattern and predict it for unseen conditions with high accuracy. Furthermore, it provided about 10% and 16% higher accuracy compared to two benchmark optimizers, namely shuffled complex evolution and shuffled frog leaping algorithm. Hence, the EFO-supervised neural network can be a promising tool for the early prediction of SIr in practice. The findings of this research may shed light on the use of advanced intelligent models for efficient energy development

    A fused lightweight CNN model for the diagnosis of COVID-19 using CT scan images

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    Computed tomography is an effective tool that can be used for the fast diagnosis of COVID-19. However, in high case-load scenarios, there are chances of delay and human error in interpreting the scan images manually by an expert. An artificial intelligence (AI) based automated tool can be employed for fast and efficient diagnosis of this disease. For image-based diagnosis, convolutional neural networks (CNN) which is a subcategory of AI has been widely explored. However, these CNN models require significant computational resources for processing. Hence in this work, the performance of two lightweight least explored CNN models, namely SqueezeNet and ShuffleNet have been evaluated with CT scan images. While SqueezeNet produced an accuracy of 86.4%, ShuffleNet was able to provide an accuracy of 95.8%. Later, in order to improve the accuracy, a novel fused-model combining these two models has been developed and its performance has been evaluated. The fused-model outperformed the two base models with an overall accuracy of 97%. The analysis of the confusion matrix revealed an improved specificity of 96.08% and precision of 96.15% with a better fallout and false discovery rate of 3.91% and 3.84%, respectively

    Enhanced Differential Crossover and Quantum Particle Swarm Optimization for IoT Applications

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    An optimized design with real-time and multiple realistic constraints in complex engineering systems is a crucial challenge for designers. In the non-uniform Internet of Things (IoT) node deployments, the approximation accuracy is directly affected by the parameters like node density and coverage. We propose a novel enhanced differential crossover quantum particle swarm optimization algorithm for solving nonlinear numerical problems. The algorithm is based on hybrid optimization using quantum PSO. Differential evolution operator is used to circumvent group moves in small ranges and falling into the local optima and improves global searchability. The cross operator is employed to promote information interchange among individuals in a group, and exceptional genes can be continued moderately, accompanying the evolutionary process's continuance and adding proactive and reactive features. The proposed algorithm's performance is verified as well as compared with the other algorithms through 30 classic benchmark functions in IEEE CEC2017, with a basic PSO algorithm and improved versions. The results show the smaller values of fitness function and computational efficiency for the benchmark functions of IEEE CEC2019. The proposed algorithm outperforms the existing optimization algorithms and different PSO versions, and has a high precision and faster convergence speed. The average location error is substantially reduced for the smart parking IoT application
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