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Worldwide Predictive Maintenance Industry to 2027 - Real-Time Condition Monitoring to Assist in Taking Prompt Actions - GlobeNewswire

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Dublin, June 01, 2021 (GLOBE NEWSWIRE) -- The "Predictive Maintenance Market by Component, Technique, Deployment Type, Stakeholder, Industry Vertical: Global Opportunity Analysis and Industry Forecast, 2020-2027" report has been added to ResearchAndMarkets.com's offering.

Predictive maintenance (PdM) is a process used to monitor equipment during an operation with the purpose to identify any deterioration. It helps to plan maintenance schedules and reduce operational costs. In addition, data about previous breakdowns is used as a model when failures are likely to occur. This, in turn, helps to arbitrate a condition at the same time as sensors detect it. PdM techniques are used to identify the time when an in-service equipment requires maintenance to avoid expensive operational disruptions caused due to equipment failures. Increase in adoption of industry 4.0 and growth of the manufacturing industry drive demand for predictive maintenance solutions.

An increase in need to improve the uptime of an asset and reduce cost, growth in investments of predictive maintenance, owing to adoption of IoT, and rise in need to extend the lifetime of aging assets drive the growth of the global predictive maintenance market. Further, an increase in the need to gain insights from the adoption of new technologies boosts the growth of the predictive maintenance market. However, difficulty in implementation and data security concerns hamper the market growth. Furthermore, the adoption of advanced technologies such as machine learning, integration of predictive maintenance with IIoT, and growth in need for remote monitoring and asset management post COVID-19 pandemic is anticipated to fuel growth of the predictive maintenance market.

The global predictive maintenance market is segmented on the basis of component, deployment, technique, stakeholder, industry vertical, and region. By component, it is bifurcated into solution and service. According to deployment, it is classified into cloud and on-premise. Further, by technique, it is divided into vibration monitoring, electrical testing, oil analysis, ultrasonic leak detectors, shock pulse, infrared, and others. By stakeholder, it is classified into MRO, OEM/ODM, and technology integrators. On the basis of industry vertical, it is classified into manufacturing, energy & utilities, aerospace & defense, transportation & logistics, government, and others. Region wise, it is analyzed across North America, Europe, Asia-Pacific, and LAMEA.

The report analyzes the profiles of key players operating in the market. These include IBM Corporations, Microsoft, SAP SE, General Electric, Schneider Electric, Hitachi, PTC, Software AG, SAS, Engineering Consultants Group, Inc., Expert Microsystems, Inc., SparkCognition, C3.Ai, Uptake Technologies Inc., Fiix Inc., Operational Excellence (Opex) Group Ltd, TIBCO Software Inc., Asystom, Reliability Solutions Sp. zo.o. and Sigma Industrial Precision.

Key Benefits

  • The study provides an in-depth analysis of the Global Predictive Maintenance Market along with the current & future trends to elucidate the imminent investment pockets.
  • Information about key drivers, restrains, and opportunities and their impact analyses on the market size is provided in the report.
  • Porter's five forces analysis illustrates the potency of buyers and suppliers operating in the industry.
  • The quantitative analysis of the Global Predictive Maintenance Market from 2019 to 2027 is provided to determine the market potential.

Key Topics Covered:

CHAPTER 1: INTRODUCTION

CHAPTER 2: EXECUTIVE SUMMARY
2.1. CXO PERSPECTIVE

CHAPTER 3: MARKET LANDSCAPE
3.1. MARKET DEFINITION AND SCOPE
3.2. KEY FINDINGS
3.3. PORTER'S FIVE FORCES ANALYSIS
3.4. KEY PLAYER POSITIONING
3.5. MARKET DYNAMICS
3.5.1. Drivers
3.5.1.1. The need to improve uptime of equipment and maintenance cost reduction
3.5.1.2. Increase in investment on predictive maintenance
3.5.1.1. Rise in need to extend lifetime of aging assets
3.5.2. Restraints
3.5.2.1. Lack of skilled staff
3.5.2.2. Difficult to implement
3.5.2.3. Data privacy and security concerns
3.5.3. Opportunity
3.5.3.1. Integration of predictive maintenance with IIoT and use of machine learning
3.5.3.2. Real-time condition monitoring to assist in taking prompt actions
3.5.3.3. Growth in need for remote monitoring and asset management post pandemic
3.6. VALUE CHAIN ANALYSIS
3.7. ROBOTICS ADOPTION IN MANUFACTURING
3.8. AI IMPLEMENTATION ANALYSIS ACROSS INDUSTRY VERTICALS
3.9. QUALITATIVE INSIGHTS (DETECTION AND DIAGNOSIS)
3.10. MODELS AND APPROACHES
3.11. COVID-19 IMPACT ANALYSIS ON PREDICTIVE MAINTENANCE MARKET

CHAPTER 4: PREDICTIVE MAINTENANCE MARKET, BY COMPONENT

CHAPTER 5: PREDICTIVE MAINTENANCE MARKET, BY TECHNIQUE

CHAPTER 6: PREDICTIVE MAINTENANCE MARKET, BY DEPLOYMENT TYPE

CHAPTER 7: PREDICTIVE MAINTENANCE MARKET, BY STAKEHOLDER

CHAPTER 8: PREDICTIVE MAINTENANCE MARKET, BY INDUSTRY VERTICAL

CHAPTER 9: PREDICTIVE MAINTENANCE MARKET, BY REGION

CHAPTER 10: COMPETITIVE LANDSCAPE

CHAPTER 11: COMPANY PROFILES
11.1. ASYSTOM
11.1.1. Company overview
11.1.2. Key executives
11.1.3. Company snapshot
11.1.4. Product portfolio
11.1.5. Key strategic moves and developments
11.2. C3. AI, INC.
11.2.1. Company overview
11.2.2. Key executives
11.2.3. Company snapshot
11.2.4. Operating business segments
11.2.5. Product portfolio
11.2.6. Business performance
11.2.7. Key strategic moves and developments
11.3. ENGINEERING CONSULTANTS GROUP, INC.
11.3.1. Company overview
11.3.2. Key executives
11.3.3. Company snapshot
11.3.4. Product portfolio
11.3.5. Key strategic moves and developments
11.4. EXPERT MICROSYSTEMS, INC.
11.4.1. Company overview
11.4.2. Key Executives
11.4.3. Company snapshot
11.4.4. Product portfolio
11.5. FIIX INC.
11.5.1. Company overview
11.5.2. Key executives
11.5.3. Company snapshot
11.5.4. Product portfolio
11.5.5. Key strategic moves and developments
11.6. OPERATIONAL EXCELLENCE (OPEX) GROUP LTD
11.6.1. Company overview
11.6.2. Key Executives
11.6.3. Company snapshot
11.6.4. Product portfolio
11.6.5. Key strategic moves and developments
11.7. SIGMA INDUSTRIAL PRECISION
11.7.1. Company overview
11.7.2. Key Executives
11.7.3. Company snapshot
11.7.4. Product portfolio
11.8. SPARKCOGNITION
11.8.1. Company overview
11.8.2. Key Executives
11.8.3. Company snapshot
11.8.4. Product portfolio
11.8.5. Key strategic moves and developments
11.9. TIBCO SOFTWARE INC
11.9.1. Company overview
11.9.2. Key Executives
11.9.3. Company snapshot
11.9.4. Product portfolio
11.9.5. Key strategic moves and developments
11.10. UPTAKE TECHNOLOGIES INC.
11.10.1. Company overview
11.10.2. Key Executives
11.10.3. Company snapshot
11.10.4. Product portfolio
11.10.5. Key strategic moves and developments
11.11. GENERAL ELECTRIC
11.11.1. Company overview
11.11.2. Key executives
11.11.3. Company snapshot
11.11.4. Operating business segments
11.11.5. Product portfolio
11.11.6. R&D expenditure
11.11.7. Business performance
11.11.8. Key strategic moves and developments
11.12. HITACHI, LTD.
11.12.1. Company overview
11.12.2. Key executives
11.12.3. Company snapshot
11.12.4. Operating business segments
11.12.5. Product portfolio
11.12.6. R&D Expenditure
11.12.7. Business performance
11.12.8. Key strategic moves and developments
11.13. INTERNATIONAL BUSINESS MACHINES CORPORATION
11.13.1. Company overview
11.13.2. Key Executives
11.13.3. Company snapshot
11.13.4. Operating business segments
11.13.5. Product portfolio
11.13.6. R&D Expenditure
11.13.7. Business performance
11.13.8. Key strategic moves and developments
11.14. MICROSOFT CORPORATION
11.14.1. Company overview
11.14.2. Key executives
11.14.3. Company snapshot
11.14.4. Operating business segments
11.14.5. Product portfolio
11.14.6. R&D Expenditure
11.14.7. Business performance
11.14.8. Key strategic moves and developments
11.15. PTC INC.
11.15.1. Company overview
11.15.2. Key Executives
11.15.3. Company snapshot
11.15.4. Operating business segments
11.15.5. Product portfolio
11.15.6. R&D Expenditure
11.15.7. Business performance
11.15.8. Key strategic moves and developments
11.16. SAP
11.16.1. Company overview
11.16.2. Key Executives
11.16.3. Company snapshot
11.16.4. Operating business segments
11.16.5. Product portfolio
11.16.6. R&D Expenditure
11.16.7. Business performance
11.16.8. Key strategic moves and developments
11.17. SAS INSTITUTE INC.
11.17.1. Company overview
11.17.2. Key Executives
11.17.3. Company snapshot
11.17.4. Product portfolio
11.17.5. Key strategic moves and developments
11.18. SCHNEIDER ELECTRIC SE
11.18.1. Company overview
11.18.2. Key executives
11.18.3. Company snapshot
11.18.4. Operating business segments
11.18.5. Product portfolio
11.18.6. R&D Expenditure
11.18.7. Business performance
11.18.8. Key strategic moves and developments
11.19. SOFTWARE AG
11.19.1. Company overview
11.19.2. Key Executives
11.19.3. Company snapshot
11.19.4. Operating business segments
11.19.5. Product portfolio
11.19.6. R&D Expenditure
11.19.7. Business performance
11.19.8. Key strategic moves and developments
11.20. RELIABILITY SOLUTIONS SP. Z O. O.
11.20.1. Company overview
11.20.2. Key Executives
11.20.3. Company snapshot
11.20.4. Product portfolio
11.20.5. Key strategic moves and developments

For more information about this report visit https://www.researchandmarkets.com/r/knbyhv


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Worldwide Predictive Maintenance Industry to 2027 - Real-Time Condition Monitoring to Assist in Taking Prompt Actions - GlobeNewswire
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