This project addresses demand forecasting and inventory optimization in supply chain management. Traditional methods have limitations with complex demand patterns and large-scale data. Deep learning techniques are employed to enhance accuracy and efficiency. The project utilizes BO-CNN-LSTM, leveraging Bayesian optimization for hyperparameter tuning, Convolutional Neural Networks (CNNs) for spatiotemporal feature extraction, and Long Short-Term Memory Networks (LSTMs) for modeling sequential data. Experimental results validate the effectiveness of the approach, outperforming traditional methods. Practical implementation in supply chain management improves operational efficiency and cost control.
Naveen Parthasarathy M KShrey RastogiKathleen Lewis
Ta-Ping LuEmilia GarcíaJong-Yun Lee
Kalpesh Rasiklal RakholiaChandraprabh ChandraprabhR. RameshK. Dhananjay RaoS. PunithaM. Guru Vimal Kumar
Guna Sekhar SajjaSantosh Reddy AddulaMohan Kumar MeesalaPavankumar Ravipati