Mehmood, Umair, Broderick, John, Davies, Simon, Bashir, Ali Kashif ORCID: https://orcid.org/0000-0001-7595-2522 and Rabie, Khaled (2024) Machine Learning-Based Predictive Inventory for a Vending Machine Warehouse. IEEE Internet of Things Magazine, 7 (6). pp. 94-100. ISSN 2576-3180
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Abstract
In this study, we predict inventory for an IoT-enabled vending machine warehouse servicing approximately 1,500 vending machines with the goal of timely replenishing, achieving cost effectiveness, reducing stock waste, optimising the available resources and ensuring fulfilment of consumer demand. The study deploys four different ML algorithms, namely, Extreme gradient boosting, Autoregressive integrated moving average with/without exogenous variables (ARIMA/ARIMAX), Facebook Prophet (Fb Prophet), and Support Vector Regression (SVR). The study unfolds in two phases. First, we utilise conventional historical sales data variables to make the prediction whereas in the second phase, we systematically introduced external variables including weekday, sales deviation flag, and holiday flags into our ML algorithms. The results indicate a significant performance boost using external variables with extreme gradient boosting achieving the lowest (Mean Absolute Error) MAE of 22, followed by ARIMAX, FB Prophet, and SVR with MAE values of 27, 37, and 38, respectively.
Impact and Reach
Statistics
Additional statistics for this dataset are available via IRStats2.