Predictive maintenance as an internet of things enabled business model: A taxonomy

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OriginalspracheEnglisch
Seiten (von - bis)67-87
Seitenumfang21
FachzeitschriftElectronic markets
Jahrgang31
Ausgabenummer1
Frühes Online-Datum19 Okt. 2020
PublikationsstatusVeröffentlicht - März 2021

Abstract

Predictive maintenance (PdM) is an important application of the Internet of Things (IoT) discussed in many companies, especially in the manufacturing industry. PdM uses data, usually sensor data, to optimize maintenance activities. We develop a taxonomy to classify PdM business models that enables a comparison and analysis of such models. We use our taxonomy to classify the business models of 113 companies. Based on this classification, we identify six archetypes using cluster analysis and discuss the results. The “hardware development”, “analytics provider”, and “all-in-one” archetypes are the most frequently represented in the study sample. For cluster analysis, we use a visualization technique that involves an autoencoder. The results of our analysis will help practitioners assess their own business models and those of other companies. Business models can be better differentiated by considering the different levels of IoT architecture, which is also an important implication for further research.

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Predictive maintenance as an internet of things enabled business model: A taxonomy. / Passlick, Jens; Dreyer, Sonja; Olivotti, Daniel et al.
in: Electronic markets, Jahrgang 31, Nr. 1, 03.2021, S. 67-87.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Passlick J, Dreyer S, Olivotti D, Grützner L, Eilers D, Breitner MH. Predictive maintenance as an internet of things enabled business model: A taxonomy. Electronic markets. 2021 Mär;31(1):67-87. Epub 2020 Okt 19. doi: 10.1007/s12525-020-00440-5
Passlick, Jens ; Dreyer, Sonja ; Olivotti, Daniel et al. / Predictive maintenance as an internet of things enabled business model : A taxonomy. in: Electronic markets. 2021 ; Jahrgang 31, Nr. 1. S. 67-87.
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