Spare Parts Predictive Analytics for Telecommunications Company

Spare parts management is the backbone of asset intensive industries such as telecommunications companies, which operate in a highly competitive environment. Network reliability is a strategic goal as it ensures high customer service level and connectivity. Although companies utilize information rel...

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Main Author: Mamakos, Alexandros
Format: Thesis
Language:en_US
Published: 2022
Subjects:
Online Access:https://hdl.handle.net/1721.1/142919
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author Mamakos, Alexandros
author_facet Mamakos, Alexandros
author_sort Mamakos, Alexandros
collection MIT
description Spare parts management is the backbone of asset intensive industries such as telecommunications companies, which operate in a highly competitive environment. Network reliability is a strategic goal as it ensures high customer service level and connectivity. Although companies utilize information related to the expected life of assets and plan maintenance activities, unplanned maintenance is still driven ad hoc. This has an impact not only on the company’s operations, inventory levels and cost but also on customers’ satisfaction. This capstone studies how telecommunications companies can improve the prediction of site failures and introduces a proactive maintenance approach. Based on our sponsor’s pilot project, we apply the MIT’s digital supply chain framework to define the value proposition and use the last 3 years of data to develop predictive models for site failures. To approach this case, we start by using the k-means algorithm and cluster the sites in three groups based on variability and demand for spare parts. To predict site failures, we apply time series models (exponential smoothing, Holt Winters and ARIMA) and assess the forecast accuracy based on RMSE and MAPE. In the last stage, we use supervised machine learning classification algorithms (Naive Bayes, Decision Tree, and Random Forest) and assess the accuracy using the correlation matrix. Based on our pilot project, we found that, while time series have a high percentage of error, machine learning algorithms can predict assets failures with accuracy between 60% to 85% and drive predictive maintenance and reduction of inventory levels and ageing. Nevertheless, companies should consider high quality and real time data prerequisites for machine learning. Our findings can be useful for other asset intensive companies that currently use traditional maintenance methods and are seeking to improve their predictive capabilities
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spelling mit-1721.1/1429192022-06-10T03:03:17Z Spare Parts Predictive Analytics for Telecommunications Company Mamakos, Alexandros Digital Transformation Demand Planning Machine Learning Spare parts management is the backbone of asset intensive industries such as telecommunications companies, which operate in a highly competitive environment. Network reliability is a strategic goal as it ensures high customer service level and connectivity. Although companies utilize information related to the expected life of assets and plan maintenance activities, unplanned maintenance is still driven ad hoc. This has an impact not only on the company’s operations, inventory levels and cost but also on customers’ satisfaction. This capstone studies how telecommunications companies can improve the prediction of site failures and introduces a proactive maintenance approach. Based on our sponsor’s pilot project, we apply the MIT’s digital supply chain framework to define the value proposition and use the last 3 years of data to develop predictive models for site failures. To approach this case, we start by using the k-means algorithm and cluster the sites in three groups based on variability and demand for spare parts. To predict site failures, we apply time series models (exponential smoothing, Holt Winters and ARIMA) and assess the forecast accuracy based on RMSE and MAPE. In the last stage, we use supervised machine learning classification algorithms (Naive Bayes, Decision Tree, and Random Forest) and assess the accuracy using the correlation matrix. Based on our pilot project, we found that, while time series have a high percentage of error, machine learning algorithms can predict assets failures with accuracy between 60% to 85% and drive predictive maintenance and reduction of inventory levels and ageing. Nevertheless, companies should consider high quality and real time data prerequisites for machine learning. Our findings can be useful for other asset intensive companies that currently use traditional maintenance methods and are seeking to improve their predictive capabilities 2022-06-09T20:54:34Z 2022-06-09T20:54:34Z 2022-06-09 Thesis https://hdl.handle.net/1721.1/142919 en_US CC0 1.0 Universal http://creativecommons.org/publicdomain/zero/1.0/ application/pdf
spellingShingle Digital Transformation
Demand Planning
Machine Learning
Mamakos, Alexandros
Spare Parts Predictive Analytics for Telecommunications Company
title Spare Parts Predictive Analytics for Telecommunications Company
title_full Spare Parts Predictive Analytics for Telecommunications Company
title_fullStr Spare Parts Predictive Analytics for Telecommunications Company
title_full_unstemmed Spare Parts Predictive Analytics for Telecommunications Company
title_short Spare Parts Predictive Analytics for Telecommunications Company
title_sort spare parts predictive analytics for telecommunications company
topic Digital Transformation
Demand Planning
Machine Learning
url https://hdl.handle.net/1721.1/142919
work_keys_str_mv AT mamakosalexandros sparepartspredictiveanalyticsfortelecommunicationscompany