Reiners, Robin ORCID: 0009-0008-8873-9403 (2025). Data Analytics for Inventory Management Demand and Lead Time Estimation for Spare Parts Planning. PhD thesis, Universität zu Köln.

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Abstract

This dissertation investigates data-driven methods for improving spare-parts inventory management under intermittent demand and uncertain lead times. Using ERP master data and purchase orders from a global equipment manufacturer, it first develops machine-learning models to predict procurement lead times more accurately than static ERP settings, reducing safety stocks and inventory costs. Second, it proposes a non-parametric conditional density framework to estimate full predictive distributions of lead-time demand, enabling better service-level control. Third, a simulation study analyzes cross-learning across SKUs, showing when pooling information improves forecasting and when item-level models remain preferable for robust inventory decisions, offering practical guidance for practitioners.

Item Type: Thesis (PhD thesis)
Creators:
Creators
Email
ORCID
ORCID Put Code
Reiners, Robin
reiners.robin@icloud.com
UNSPECIFIED
URN: urn:nbn:de:hbz:38-793177
Date: 2025
Language: English
Faculty: Faculty of Management, Economy and Social Sciences
Divisions: Faculty of Management, Economics and Social Sciences > Business Administration > Supply Chain Management > Professorship for Business Administration, Supply Chain Management and Management Science
Subjects: Data processing Computer science
Management and auxiliary services
Uncontrolled Keywords:
Keywords
Language
lead time
English
machine learning
English
inventory management
English
intermittend demand
English
forecasting
English
data analytics
English
Date of oral exam: 21 November 2025
Referee:
Name
Academic Title
Thonemann, Ulrich
Professor
Refereed: Yes
URI: http://kups.ub.uni-koeln.de/id/eprint/79317

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