Applications of robust stochastic control in optimal inventory management

This paper investigates the general approach that applies the concept of equivalent measures and the change of measure to build robust impulse control models based on the existing optimal impulse control framework. Two dynamic decision making processes are studied in the presence of stochastic uncer...

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Main Author: Tang, Zimo
Other Authors: PUN Chi Seng
Format: Final Year Project
Language:English
Published: Nanyang Technological University 2020
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Online Access:https://hdl.handle.net/10356/139554
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1395542023-02-28T23:16:36Z Applications of robust stochastic control in optimal inventory management Tang, Zimo PUN Chi Seng School of Physical and Mathematical Sciences cspun@ntu.edu.sg Science::Mathematics This paper investigates the general approach that applies the concept of equivalent measures and the change of measure to build robust impulse control models based on the existing optimal impulse control framework. Two dynamic decision making processes are studied in the presence of stochastic uncertainty for ambiguity-averse decision makers. In the case of inventory management, the management team concerns about the model uncertainty and seeks for an optimal robust control that minimizes the cost while maintains the adaptability of the business throughout the approximately infinite time span of operation. In the case of portfolio selection, the investor concerns about the model uncertainty and seeks for an trading strategy that maximizes expected utility of consumption during the finite investment horizon. For both cases, we introduce the notion of relative entropy in recognizing the imposed penalty due to model uncertainty. However, different formulations of the preference function are deployed for the models, given the fact that their value functions are of different forms. We formulate each problems into a set of quasi-variational inequities (QVI). Applying perturbation techniques to the QVIs associated with the inventory problem, we can derive an inventory control strategy that approximates the optimal strategy of the robust optimization problem under the presence of stochastic volatility. For the portfolio selection problem, we simplify it to an alternative problem and the numerical method to solve such problem could be an interest of future research work. In the end, we discuss numerical results to illustrate the practical use of theoretical results and draw economic explanations from the robust control policy. Bachelor of Science in Mathematical Sciences 2020-05-20T05:28:52Z 2020-05-20T05:28:52Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/139554 en application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Science::Mathematics
spellingShingle Science::Mathematics
Tang, Zimo
Applications of robust stochastic control in optimal inventory management
description This paper investigates the general approach that applies the concept of equivalent measures and the change of measure to build robust impulse control models based on the existing optimal impulse control framework. Two dynamic decision making processes are studied in the presence of stochastic uncertainty for ambiguity-averse decision makers. In the case of inventory management, the management team concerns about the model uncertainty and seeks for an optimal robust control that minimizes the cost while maintains the adaptability of the business throughout the approximately infinite time span of operation. In the case of portfolio selection, the investor concerns about the model uncertainty and seeks for an trading strategy that maximizes expected utility of consumption during the finite investment horizon. For both cases, we introduce the notion of relative entropy in recognizing the imposed penalty due to model uncertainty. However, different formulations of the preference function are deployed for the models, given the fact that their value functions are of different forms. We formulate each problems into a set of quasi-variational inequities (QVI). Applying perturbation techniques to the QVIs associated with the inventory problem, we can derive an inventory control strategy that approximates the optimal strategy of the robust optimization problem under the presence of stochastic volatility. For the portfolio selection problem, we simplify it to an alternative problem and the numerical method to solve such problem could be an interest of future research work. In the end, we discuss numerical results to illustrate the practical use of theoretical results and draw economic explanations from the robust control policy.
author2 PUN Chi Seng
author_facet PUN Chi Seng
Tang, Zimo
format Final Year Project
author Tang, Zimo
author_sort Tang, Zimo
title Applications of robust stochastic control in optimal inventory management
title_short Applications of robust stochastic control in optimal inventory management
title_full Applications of robust stochastic control in optimal inventory management
title_fullStr Applications of robust stochastic control in optimal inventory management
title_full_unstemmed Applications of robust stochastic control in optimal inventory management
title_sort applications of robust stochastic control in optimal inventory management
publisher Nanyang Technological University
publishDate 2020
url https://hdl.handle.net/10356/139554
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