Demand Forecasting and Inventory Management of Perishable Inventory - with a Focus on Blood Platelet Transfusions
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Abstract
Inventory management of perishable products has seen extensive study over the years; the
perishable nature capturing the real-world phenomena of expiration after a limited shelf
life. Such problems are challenging as they involve balancing demand fulfillment with
minimal wastage. An added dimension to such problems, given the rise of machine learning,
is to estimate future demand. Demand forecasts can be helpful for decision making,
in particular they can be used for finding the optimal ordering quantity for the products.
The central thesis of this dissertation is that by forecasting the demand and utilizing it in
the inventory management process, we can build a more robust inventory system that takes
additional information into consideration when making decisions.
Firstly, five different demand forecasting methods, ARIMA (Auto Regressive Integrated
Moving Average), Prophet, lasso regression (least absolute shrinkage and selection
operator), random forest, and LSTM (Long Short-Term Memory) networks are utilized
and evaluated via a rolling window method. Subsequently, we study the structural properties
of the optimal ordering policy for perishable products with fixed shelf lives in a
periodic-review single-item inventory system over a finite horizon, where demand forecasts
are available. The objective is to find the optimal ordering policy that minimizes the
total expected cost, consisting of a linear ordering cost, inventory holding cost, wastage cost, and shortage cost, over a finite horizon. We show that the optimal policy is a state-dependent
base-stock policy in which the base-stock values are a function of the system’s
state, the inventory level, a vector of current and previous demand forecasts, and previous
demand values. Moreover, we explore the monotonicity properties of the optimal policy.
The monotonicity properties motivate us to propose a heuristic in which the order quantity
is an affine function of the inventory level and forecast-dependent target inventory levels.
We evaluate the performance of the proposed heuristic on platelet transfusion data for
hospitals in Hamilton, Ontario. Experimental results show that the proposed heuristic is
effective in minimizing the total cost while maintaining low on-hand inventory levels.