The use of cutting-edge technologies like computerised material arrangements, artificial intelligence (AI), and the internet of things (IoT) raises the possibility of netting-located attacks in industrial manufacturing. In industrial settings, instances of cyberattacks may corrupt data, disrupt operations, and even inflict bodily injury. To identify manufacturing web-based attacks, this study proposes novel deep-learning strategies. It examines the effectiveness of deep learning models, including convolutional neural networks impacting animate nerve organ systems (CNNs or CNN), reiterating impacting animate nerve organ systems (RNNs), and change models in classifying attacks and identifying the typical attack attribute. Regarding manufacturing detection, the anticipated engineer-based structure exhibits superior performance in veracity, precision, and recall compared to conventional artificial intelligence systems and existing deep knowledge methods.