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Operational Predictive Maintenance Market Size, Market Share, Application Analysis, Regional Outlook, Growth Trends, Key Players, Competitive Strategies and Forecasts, 2021 To 2029

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    Report

  • 108 Pages
  • August 2021
  • Region: Global
  • Acute Market Reports
  • ID: 5411806

The global operational predictive maintenance market is expected to grow at an anticipated CAGR of 26.16% for the forecast period 2019-2029. It is being widely used in the detection of failure patterns to determine operational processes and assets efficiency that are at great risk of failure. Deployment of operation predictive maintenance software enhances supply chain process, quality and boosts current equipment uptime. This is the major factor for the deployment of this software and for the revenue growth in global operational predictive maintenance market. However, the market has evidenced adverse impact due to spread of Covid 19, which led to lockdowns across the globe. The pandemic apart from disrupting the productions and logistics activities across the industries, also led to decline in IT spending. For instance, the ICT spending in 2020 at global level declined by approximately 5% due to Covid 19. Such key impeding factors post covid 19 are also covered in the report.


Adoption of New Technologies to Boost the Market, However, Human Skills Remain Irreplaceable

Around 35% of the total industries in US have already adopted IOT and are collecting data using sensors to enhance their manufacturing process. Global IOT market alone is growing at a CAGR of 42% (for year 2012-2022) which will likely spur the demand of operational predictive maintenance in the coming years. Furthermore, adoption of new technologies has led to development of new innovative products and services and will significantly contribute towards the growth of the market. However, deployment of these solution requires additional professional knowledge that requires training and which is currently far behind, this factor is hampering the growth in the market. Predictive maintenance software is totally dependent upon both technology and human skills. In predictive maintenance, technician engineers and analysts all plays a major role to interpret the data and analyse it. Hence scarcity of skilled staff and lack of training provided to the operators is the major challenge faced by industries in adopting operational predictive maintenance. There are few other restraints aspects such barriers in adopting new technology and challenge faced by the conventional industry to implement operational predictive maintenance and to make it integral part of the manufacturing process, are obstructing the potential of global operational predictive maintenance market.


Solution Revenues Overtake That of Service Revenues

In terms of market segments, the global operational predictive maintenance market is segregated by component, application industry and deployment type. On the basis of component, the market is again segmented by solution and services; solution holds 56% of the total market and services contains 44% of the market in 2019. Integration service is expected to have a slight upper edge on consulting in term of growth rate i.e. 25.3% and 25% respectively, but both are high growth segment and can be easily deployed (investment) for ROI approach. On the basis of deployment the market is segmented into cloud based and on premise and as the cloud industries are going global and requires easy and fast access as they are shifting towards cloud implementation and hence this market is also anticipated to have that shift with the growth rate CAGR 28.9% during 2021-2029. Solution comprises the software and hardware part and services contains deployment part i.e. the human intervention in the market.


Automotive Dominates The Current Market However, Healthcare is The Future

On the basis of application industry automotive industry dominates the whole market. Automotive industry is expected to dominate the market during the forecast period. Even though it is expected to shrink its market share over the forecast period, it is expected to still account for the largest revenues until 2029. Manufacturing industry is also a promising segment as it presently consumes a significant amount around 19% of the total market, and will continue to deploy these solutions in order to decrease cost and increase efficiency. The Healthcare industry is undoubtedly anticipated to grow with the highest growth CAGR 27.8% owing to its increasing involvement with IoT and big data analytics and simply because it cannot afford to have any kind of break down in their process. Transport and logistics and energy utilities are the two segments yet to gain their pace for the growth globally, but in some part of developed geographies, their involvement with big data and analytics is improving them to work more efficiently, which will ultimately increase their output and reduce the cost.


North America’s Takes the Lions Share, APAC to Evidence Highest Growth

On the basis of geography North America region holds the largest market share as it was always an early adopter of technologies and innovation; however, Asia Pacific region is likely to grow with the highest CAGR 27.2% in the forecast period, owing to the rapid development and industrialization in countries like China and India. Asia pacific is also being a favorable place for investors which are fuelling the growth in the market. Out of all the application industry healthcare is seems to be largely accepting the predictive maintenance solution in the coming years, and this is only because they just cannot afford to have any kind of break down in their regular process, as in can cost them with difficulties in saving human lives.

The key market players include IBM (US), Microsoft (US), SAP (Germany), Hitachi (Japan), PTC (US), GE (US), Schneider Electric (France), Software AG (Germany), SAS (US), TIBCO (US), C3 IoT (US), Uptake (US), Softweb Solutions (US), Asystom (France), Ecolibrium Energy (India), Fiix Software (Canada), OPEX Group (UK), Dingo (Australia), Sigma Industrial Precision (Spain), Google (US), Oracle(US), HPE (US), AWS (US), Micro Focus (UK), Splunk (US), Altair (US), RapidMiner (US), ReliaSol (Netherlands), and Seebo (Israel). The key focus of top-tier companies is product launch and upgrades followed by collaborations.


Historical & Forecast Period

This research report presents the analysis of each segment from 2019 to 2029 considering 2020 as the base year for the research. Compounded annual growth rate (CAGR) for each respective segment is calculated for the forecast period from 2021 to 2029.


Report Methodology

Market revenues and CAGR were derived from primary and secondary research. Both quantitative and qualitative trends were considered for extrapolation of market revenues. The derived market estimates were further validated from top down, bottom strategies and primary research. The scope of the market is limited to the following segments of product categories and region.


Segmentation

 By Component (2019-2029; US$ Mn)

  • Solution
  • Services
    • System Integration
    • Training And Support
    • Consulting

 Deployment Type (2019-2029; US$ Mn)

  • On-Premises
  • On Cloud

 Application area (2019-2029; US$ Mn)

  • Automotive Energy and utilities
  • Healthcare
  • Manufacturing
  • Government & defense
  • Others

 Region type Segment (2019-2029; US$ Mn)

  • North America
  • Europe
  • Asia Pacific
  • Latin America
  • Africa

 Global Impact of Covid-19 Segment (2020-2021; US$ Mn)

  • Pre Covid-19 situation
  • Post Covid-19 situation

Key questions answered in this report

  • What are the key market segments in the current scenario and in the future by product categories?
  • What are the key market segments in the current scenario and in the future by regions?
  • What is the key impact of Covid-19 over market revenues and market determinants in the operational predictive maintenance market?
  • What are the primary and secondary macro and micro factors influencing the market growth currently and during the forecast period?
  • What are the primary and secondary macro and micro factors deterring the market growth currently and during the forecast period?
  • How to overcome the current market challenges and leverage the opportunities in each of the market segments?
  • Who are the key players in the operational predictive maintenance market and what are their key product categories and strategies?
  • What are the key strategies – mergers/acquisitions/R&D/strategic partnerships etc that companies are deploying to enhance market revenues and growth?


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Table of Contents

Chapter 1. Preface
1.1 Report Description
1.1.1 Purpose of the Report
1.1.2 Target Audience
1.1.3 Key offerings
1.2 Market Segmentation
1.3 Research Methodology
1.3.1 Phase I – Secondary Research
1.3.2 Phase II – Primary Research
1.3.3 Phase III – Expert Panel Review
1.3.4 Assumptions
1.3.5 Approach Adopted
Chapter 2. Executive Summary
2.1 Market Snapshot: Global Virtual Data Rooms Market
2.2 Global Operational Predictive Maintenance Market by Component ($ Million) 2020 (US$ Mn)
2.3 Global operational predictive maintenance market by Deployment type ($ Million) 2020 (US$ Mn)
2.4 Global operational predictive maintenance market by Application ($ Million) 2020 (US$ Mn)
2.5 Global Virtual Data Rooms Market, by Geography, 2020 (US$ Mn)
2.6 Porter’s Five force Model
2.7 See Saw Analysis
2.8 Key Buying Criteria
2.9 Vendor Landscape
2.10 Porter’s Five force Model
2.11 PESTEL Analysis
2.12 GAP Analysis
2.13 Impact of Covid 19
Chapter 3. Global Operational Predictive Maintenance Market by Component 2019-2029($ Million)
3.1. Global Operational Predictive Maintenance Market by Solutions 2019-2029($ Million)
3.2. Global Operational Predictive Maintenance Market by Services 2019-2029($ Million)
3.2.1. Global Operational Predictive Maintenance Market by System integration 2019-2029($ Million)
3.2.2. Global Operational Predictive Maintenance Market by Training and Support 2019-2029($ Million)
3.2.3. Global Operational Predictive Maintenance Market by Consulting 2019-2029($ Million)
Chapter 4. Global Operational Predictive Maintenance Market by Deployment Type 2019-2029($ Million)
4.1. Global Operational Predictive Maintenance Market by Cloud Deployment 2019-2029($ Million)
4.2. Global Operational Predictive Maintenance Market by On Premises Deployment 2019-2029($ Million)
Chapter 5. Global Operational Predictive Maintenance Market by Application 2019-2029($ Million)
5.1. Global Operational Predictive Maintenance Market by Automotive 2019-2029($ Million)
5.2. Global Operational Predictive Maintenance Market by Energy and Utilities 2019-2029($ Million)
5.3. Global Operational Predictive Maintenance Market by Healthcare 2019-2029($ Million)
5.4. Global Operational Predictive Maintenance Market by Manufacturing 2019-2029($ Million)
5.5. Global Operational Predictive Maintenance Market by Government & Defense 2019-2029($ Million)
5.6. Global Operational Predictive Maintenance Market by Transport and Logistics 2019-2029($ Million)
Chapter 6. North America Operational Predictive Maintenance Market 2019-2029($ Million)
6.1. North America Market Estimates and forecast 2019-2029($ Million)
6.2. North America Market Estimates and Forecast by Application 2019-2029($ Million)
6.3. North America Market Estimates and Forecast by Region 2019-2029($ Million)
6.3.1. U.S. Market Estimates and forecast 2019-2029($ Million)
6.3.2. Canada Market Estimates and forecast 2019-2029($ Million)
Chapter 7. Europe Operational Predictive Maintenance Market 2019-2029($ Million)
7.1. Europe Market Estimates and forecast 2019-2029($ Million)
7.2. Europe Market Estimates and Forecast by Application 2019-2029($ Million)
7.3. Europe Market Estimates and Forecast by Region 2019-2029($ Million)
7.3.1. Germany Market Estimates and forecast 2019-2029($ Million)
7.3.2. UK Market Estimates and forecast 2019-2029($ Million)
7.3.3. France Market Estimates and forecast 2019-2029($ Million)
7.3.4. Spain Market Estimates and forecast 2019-2029($ Million)
7.3.5. Rest of Europe Market Estimates and forecast 2019-2029($ Million)
Chapter 8. Asia Pacific Operational Predictive Maintenance Market 2019-2029($ Million)
8.1. Asia Pacific Market Estimates and forecast 2019-2029($ Million)
8.2. Asia Pacific Market Estimates and Forecast by Application 2019-2029($ Million)
8. 3. Asia Pacific Market Estimates and Forecast by Region 2019-2029($ Million)
8.3.1. China Market Estimates and forecast 2019-2029($ Million)
8.3.2. India Market Estimates and forecast 2019-2029($ Million)
8.3.3. Japan Market Estimates and forecast 2019-2029($ Million)
8.3.4. Others Market Estimates and forecast 2019-2029($ Million)
Chapter 9. RoW Operational Predictive Maintenance Market 2019-2029($ Million)
9.1. Row Market Estimates and forecast 2019-2029($ Million)
9.2. Rest of The World Market Estimates and Forecast by Application 2019-2029($ Million)
9.2.1. Middle East and North Africa Market Estimates and forecast 2019-2029($ Million)
9.2.2. Latin America Market Estimates and forecast 2019-2029($ Million)
9.2.3. Brazil Market Estimates and forecast 2019-2029($ Million)
Chapter 10. Company profiles
10.1. Accenture
10.1.1. Company Overview
10.1.2. Scot Analysis
10.1.3. Product Benchmarking
10.1.4. Strategic initiatives
10.2. Altizon
10.2.1. Company Overview
10.2.2. Scot Analysis
10.2.3. Product Benchmarking
10.2.4. Strategic initiatives
10.3. Emaint Enterprises LLC (Subsidiary of Fluke Corporation)
10.3.1. Company Overview
10.3.2. Scot Analysis
10.3.3. Product Benchmarking
10.3.4. Strategic initiatives
10.4. Evalueserve
10.4.1. Company Overview
10.4.2. Scot Analysis
10.4.3. Product Benchmarking
10.4.4. Strategic initiatives
10.5. Fusionex Analytics
10.5.1. Company Overview
10.5.2. Scot Analysis
10.5.3. Product Benchmarking
10.5.4. Strategic initiatives
10.6. General Electric
10.6.1. Company Overview
10.6.2. Scot Analysis
10.6.3. Product Benchmarking
10.6.4. Strategic initiatives
10.7. IBM Corporation
10.7.1. Company Overview
10.7.2. Scot Analysis
10.7.3. Product Benchmarking
10.7.4. Strategic initiatives
10.8. Parameteric Technology Corporation
10.8.1. Company Overview
10.8.2. Scot Analysis
10.8.3. Product Benchmarking
10.8.4. Strategic initiatives
10.9. Rockwell Automation
10.9.1. Company Overview
10.9.2. Scot Analysis
10.9.3. Product Benchmarking
10.9.4. Strategic initiatives
10.10. Sap SE
10.10.1. Company Overview
10.10.2. Scot Analysis
10.10.3. Product Benchmarking
10.10.4. Strategic initiatives
10.11. Sas institute inc
10.11.1. Company Overview
10.11.2. Scot Analysis
10.11.3. Product Benchmarking
10.11.4. Strategic initiatives
10.12. Schneider Electric SE
10.12.1. Company Overview
10.12.2. Scot Analysis
10.12.3. Product Benchmarking
10.12.4. Strategic initiatives
10.13. Sigfox
10.13.1. Company Overview
10.13.2. Scot Analysis
10.13.3. Product Benchmarking
10.13.4. Strategic initiatives
10.14. Svenska Kullagerfabriken Ab (Skf)
10.14.1. Company Overview
10.14.2. Scot Analysis
10.14.3. Product Benchmarking
10.14.4. Strategic initiatives
10.15. Software Ag
10.15.1. Company Overview
10.15.2. Scot Analysis
10.15.3. Product Benchmarking
10.15.4. Strategic initiatives

Companies Mentioned

  • IBM
  • Microsoft
  • SAP
  • Hitachi
  • PTC
  • GE
  • Schneider Electric
  • Software AG
  • SAS
  • TIBCO
  • C3 IoT
  • Uptake
  • Softweb Solutions
  • Asystom
  • Ecolibrium Energy
  • Fiix Software
  • OPEX Group
  • Dingo
  • Sigma Industrial Precision
  • Google
  • Oracle
  • HPE
  • AWS
  • Micro Focus
  • Splunk
  • Altair
  • RapidMiner
  • ReliaSol
  • Seebo