AUTHOR=Kengpol Athakorn , Tabkosai Pornthip TITLE=Design of hybrid deep learning using TSA with ANN for cost evaluation in the plastic injection industry JOURNAL=Frontiers in Mechanical Engineering VOLUME=Volume 10 - 2024 YEAR=2024 URL=https://www.frontiersin.org/journals/mechanical-engineering/articles/10.3389/fmech.2024.1336828 DOI=10.3389/fmech.2024.1336828 ISSN=2297-3079 ABSTRACT=The plastic injection industry is one of the most extensively used mass-production technology and has been continuously increasing in recent years. Cost evaluation is essential in corporate operations to increase market share and lead in plastic parts pricing. The complexity of the plastic parts and manufacturing data resulted in a long data waiting time and inaccurate cost evaluation. Therefore, the aim of this research is to apply a cost evaluation approach that hybrid deep learning of Tunicate Swarm Optimization (TSA) with Artificial Neural Network (ANN) for cost evaluation of complicated surface products in the plastic injection industry to achieve a faster convergence rate for optimal solutions and higher accuracy. The methodology entails ANN, which applies feature-based extraction of 3D-model complicated surface products to develop a cost evaluation model. TSA is used to construct the initial weight into the learning model of ANN, which can generate faster-to-convergent optimal solutions and higher accuracy. The result shows that the new hybrid deep learning TSA with ANN provides a more accurate cost evaluation than ANN. The prediction accuracy of cost evaluation is approximately 96.66% for part cost and 93.75% for mould cost. The contribution of this research is the development of a new hybrid deep learning combining TSA with ANN that includes the calculation of the number of hidden layers specifically for complicated surface products which are unavailable in the literature. The cost evaluation approach can be practically applied and is accurate for complicated surface products in the plastic injection industry.