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市场调查报告书
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1680205

工业人工智慧市场报告:2031 年趋势、预测与竞争分析

Industrial AI Market Report: Trends, Forecast and Competitive Analysis to 2031

出版日期: | 出版商: Lucintel | 英文 150 Pages | 商品交期: 3个工作天内

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简介目录

全球工业人工智慧市场前景光明,在玻璃製造、半导体製造、汽车、机械、化学、石油和天然气以及包装市场都存在机会。预计全球工业人工智慧市场从 2025 年到 2031 年的复合年增长率将达到 30.4%。该市场的主要驱动力是工业领域对自动化和效率的需求不断增加、工业环境中感测器的使用不断增加以及工业 4.0 技术的采用不断增加。

  • 根据类型,Lucintel 预测软体领域将在预测期内见证高速成长。
  • 从应用角度来看,玻璃製造预计将实现最高成长。
  • 根据地区来看,预计亚太地区将在预测期内实现最高成长。

工业人工智慧市场的策略成长机会

在技​​术进步和不断发展的工业需求的推动下,工业人工智慧市场在关键应用领域呈现出多项策略成长机会。

  • 扩大预测性维护:人工智慧主导的预测性维护具有巨大的成长潜力。透过减少设备停机时间和维护成本,该应用将极大地造福製造业和能源业等各种行业。
  • 智慧製造的成长:智慧製造技术的兴起为人工智慧的融合创造了机会。人工智慧可以增强流程自动化、品管和即时监控,使製造营运更有效率、更有效率。
  • 供应链优化的进步:透过人工智慧进行供应链优化是一个关键的成长领域。人工智慧改善了需求预测、库存管理和物流,从而实现了更有效率、更灵活的供应链。
  • 人工智慧机器人的发展:人工智慧在机器人组装和检查等任务中的应用将提供成长机会。人工智慧机器人可以提高工业流程的精度、灵活性和效率。
  • 增强流程优化:用于流程优化的 AI 解决方案越来越受欢迎。透过分析大量资料,人工智慧可以识别效率低下的问题并提出改进建议。

这些策略成长机会凸显了工业人工智慧在一系列应用领域推动创新和效率的潜力。专注于预测性维护、智慧製造、供应链优化、机器人和流程优化将使公司能够利用新的市场趋势和需求。

工业人工智慧市场的驱动因素与挑战

工业人工智慧市场受到各种驱动因素​​和挑战的影响,这些因素和挑战正在影响其成长和市场发展。这些因素包括技术、经济和监管方面的考虑。

推动工业人工智慧市场的因素包括:

  • 人工智慧技术的进步:人工智慧演算法和机器学习模型的不断改进正在推动工业人工智慧的发展。这些进步将增强人工智慧在各个产业领域的能力和应用。
  • 提高物联网的采用率:人工智慧与物联网设备的整合是关键驱动因素。物联网可以实现即时资料收集和分析,与人工智慧相结合可以增强工业流程的监控、控制和优化。
  • 对业务效率的需求:提高业务效率的需求正在推动工业人工智慧的采用。人工智慧解决方案改善了流程最佳化、预测性维护和自动化,从而节省了成本并提高了生产力。
  • 研发投入:研发投入的增加正在推动工业人工智慧的创新。资金筹措和合作支持新技术和应用的开发,推动产业发展。
  • 重视资料驱动的决策:资料主导的决策正在推动工业人工智慧的发展。人工智慧透过资料分析提供宝贵的见解,使工业营运能够做出更明智、更具策略性的决策。

工业人工智慧市场面临的挑战是:

  • 整合复杂性:将人工智慧与现有工业系统整合可能很复杂且具有挑战性。确保相容性和无缝操作需要大量的努力和专业知识。
  • 实施成本高:人工智慧解决方案的实施成本可能很高。这包括技术收购、系统整合和培训方面的成本,这对一些组织来说可能是一个障碍。
  • 资料隐私和安全问题:资料隐私和安全问题是关键问题。确保人工智慧系统遵守法规并保护敏感资讯对于赢得信任和维护安全至关重要。

影响工业人工智慧市场的驱动因素和挑战凸显了持续创新和适应的必要性。有效解决这些因素是利用成长机会和克服市场障碍的关键。

目录

第一章执行摘要

第二章 全球工业人工智慧市场:市场动态

  • 简介、背景和分类
  • 供应链
  • 产业驱动力与挑战

第三章市场趋势与预测分析(2019-2031)

  • 宏观经济趋势(2019-2024)及预测(2025-2031)
  • 全球工业人工智慧市场趋势(2019-2024)及预测(2025-2031)
  • 全球工业人工智慧市场(按类型)
    • 软体
    • 硬体
  • 全球工业人工智慧市场(按应用)
    • 玻璃製造
    • 半导体製造
    • 机器
    • 化学
    • 石油和天然气
    • 包装
    • 其他的

第四章区域市场趋势与预测分析(2019-2031)

  • 全球工业人工智慧市场(按地区)
  • 北美工业人工智慧市场
  • 欧洲工业人工智慧市场
  • 亚太工业人工智慧市场
  • 其他地区工业人工智慧市场

第五章 竞争分析

  • 产品系列分析
  • 营运整合
  • 波特五力分析

第六章 成长机会与策略分析

  • 成长机会分析
    • 全球工业人工智慧市场成长机会(按类型)
    • 全球工业人工智慧市场的成长机会(按应用)
    • 全球工业人工智慧市场各区域成长机会
  • 全球工业人工智慧市场的新趋势
  • 战略分析
    • 新产品开发
    • 全球工业人工智慧市场产能扩张
    • 全球工业人工智慧市场的企业合併
    • 认证和许可

第七章主要企业简介

  • Siemens
  • IBM
  • Microsoft
  • Cisco Systems
  • General Electric Company
  • Rockwell Automation
简介目录

The future of the global industrial AI market looks promising with opportunities in the glass manufacturing, semiconductor manufacturing, automotive, machinery, chemical, oil & gas, and packaging markets. The global industrial AI market is expected to grow with a CAGR of 30.4% from 2025 to 2031. The major drivers for this market are increasing demand for automation and efficiency among industries, growing use of sensors in industrial settings, and rising adoption of industry 4.0 technologies.

  • Lucintel forecasts that, within the type category, the software segment is expected to witness higher growth over the forecast period.
  • Within the application category, glass manufacturing is expected to witness the highest growth.
  • In terms of regions, APAC is expected to witness the highest growth over the forecast period.

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Emerging Trends in the Industrial AI Market

Industrial AI is evolving with several key trends that are reshaping how industries operate and leverage technology.

  • Increased Use of Edge AI: Edge AI is gaining traction, allowing data processing and decision-making to occur closer to the source. This trend reduces latency and improves real-time response in industrial applications, enhancing operational efficiency and safety.
  • Integration of AI with IoT: Combining AI with IoT devices is transforming industrial operations by enabling smarter monitoring and control. This integration enhances predictive maintenance, process optimization, and data-driven decision-making across various industrial sectors.
  • Adoption of AI-Driven Robotics: AI-driven robotics are increasingly used in manufacturing for tasks like assembly, inspection, and material handling. These robots offer increased precision, flexibility, and efficiency, contributing to higher productivity and reduced operational costs.
  • Focus on Predictive Maintenance: Predictive maintenance powered by AI is becoming a standard practice. By analyzing data from equipment sensors, AI can predict failures before they occur, minimizing downtime and maintenance costs while extending equipment lifespan.
  • Enhanced Data Analytics: Advanced data analytics driven by AI are providing deeper insights into industrial processes. This trend enables better decision-making, process optimization, and identification of inefficiencies, leading to more informed strategies and operational improvements.

These emerging trends are significantly reshaping the industrial AI market by enhancing real-time processing, integration, and automation. As these trends advance, they are driving increased efficiency, productivity, and cost-effectiveness across industrial applications.

Recent Developments in the Industrial AI Market

Recent developments in the industrial AI market highlight the sector's rapid evolution and its impact on manufacturing and operational processes.

  • Development of Advanced AI Algorithms: Innovations in AI algorithms are improving the accuracy and efficiency of industrial AI applications. These algorithms enhance machine learning models used in predictive maintenance, quality control, and process optimization.
  • Expansion of AI-Enabled Robotics: The deployment of AI-enabled robotics is increasing in manufacturing environments. These robots offer advanced capabilities in tasks such as assembly, inspection, and material handling, improving operational efficiency and flexibility.
  • Growth in AI-Powered Predictive Maintenance: AI-powered predictive maintenance solutions are becoming more prevalent. These solutions analyze data from equipment to predict failures and optimize maintenance schedules, reducing downtime and maintenance costs.
  • Integration with IoT Devices: AI integration with IoT devices is advancing, enabling more intelligent monitoring and control of industrial processes. This integration supports real-time data analysis and enhances process optimization and efficiency.
  • Focus on Customizable AI Solutions: There is a growing trend toward developing customizable AI solutions tailored to specific industrial needs. These solutions offer greater flexibility and adaptability, addressing unique challenges and requirements across different sectors.

These developments are transforming the industrial AI market by enhancing the capabilities and applications of AI technologies. They contribute to improved efficiency, flexibility, and cost-effectiveness in industrial operations.

Strategic Growth Opportunities for the Industrial AI Market

The industrial AI market presents several strategic growth opportunities across key applications, driven by technological advancements and evolving industry needs.

  • Expansion in Predictive Maintenance: There is significant potential for growth in AI-driven predictive maintenance. By reducing equipment downtime and maintenance costs, this application offers substantial benefits to various industries, including manufacturing and energy.
  • Growth in Smart Manufacturing: The rise of smart manufacturing technologies presents opportunities for AI integration. AI can enhance process automation, quality control, and real-time monitoring, driving efficiency and productivity in manufacturing operations.
  • Advancement in Supply Chain Optimization: AI-driven supply chain optimization is a key growth area. AI can improve demand forecasting, inventory management, and logistics, leading to more efficient and responsive supply chains.
  • Development of AI-Powered Robotics: The application of AI in robotics for tasks such as assembly and inspection offers growth opportunities. AI-powered robots can increase precision, flexibility, and efficiency in industrial processes.
  • Enhancement of Process Optimization: AI solutions for process optimization are gaining traction. By analyzing large volumes of data, AI can identify inefficiencies and recommend improvements, leading to more effective and streamlined operations.

These strategic growth opportunities highlight the potential for industrial AI to drive innovation and efficiency across various applications. By focusing on predictive maintenance, smart manufacturing, supply chain optimization, robotics, and process optimization, companies can capitalize on emerging market trends and needs.

Industrial AI Market Driver and Challenges

The industrial AI market is influenced by various drivers and challenges, impacting its growth and development. These factors include technological, economic, and regulatory considerations.

The factors responsible for driving the industrial AI market include:

  • Advancements in AI Technology: Continuous improvements in AI algorithms and machine learning models are driving the growth of industrial AI. These advancements enhance the capabilities and applications of AI in various industrial sectors.
  • Increased Adoption of IoT: The integration of AI with IoT devices is a significant driver. IoT enables real-time data collection and analysis, which, when combined with AI, enhances monitoring, control, and optimization of industrial processes.
  • Demand for Operational Efficiency: The need for increased operational efficiency is driving the adoption of industrial AI. AI solutions offer improved process optimization, predictive maintenance, and automation, leading to cost savings and higher productivity.
  • Investment in R&D: Increased investment in research and development is fostering innovation in industrial AI. Funding and collaboration support the development of new technologies and applications, advancing the industry.
  • Focus on Data-Driven Decision Making: The emphasis on data-driven decision-making is driving the growth of industrial AI. AI provides valuable insights from data analysis, enabling more informed and strategic decisions in industrial operations.

Challenges in the industrial AI market are:

  • Integration Complexity: Integrating AI with existing industrial systems can be complex and challenging. Ensuring compatibility and seamless operation requires significant effort and expertise.
  • High Implementation Costs: The cost of implementing AI solutions can be high. This includes expenses related to technology acquisition, system integration, and training, which can be a barrier for some organizations.
  • Data Privacy and Security Concerns: Concerns about data privacy and security are significant challenges. Ensuring that AI systems comply with regulations and protect sensitive information is critical for gaining trust and maintaining security.

The drivers and challenges impacting the industrial AI market highlight the need for ongoing innovation and adaptation. Addressing these factors effectively will be key to leveraging growth opportunities and overcoming market obstacles.

List of Industrial AI Companies

Companies in the market compete based on product quality offered. Major players in this market focus on expanding their manufacturing facilities, R&D investments, infrastructural development, and leverage integration opportunities across the value chain. Through these strategies, industrial AI companies cater to increasing demand, ensure competitive effectiveness, develop innovative products & technologies, reduce production costs, and expand their customer base. Some of the industrial AI companies profiled in this report include-

  • Siemens
  • IBM
  • Microsoft
  • Cisco Systems
  • General Electric Company
  • Rockwell Automation

Industrial AI by Segment

The study includes a forecast for the global industrial AI market by type, application, and region.

Industrial AI Market by Type [Analysis by Value from 2019 to 2031]:

  • Software
  • Hardware

Industrial AI Market by Application [Analysis by Value from 2019 to 2031]:

  • Glass Manufacturing
  • Semiconductor Manufacturing
  • Automotive
  • Machinery
  • Chemical
  • Oil & Gas
  • Packaging
  • Others

Industrial AI Market by Region [Analysis by Value from 2019 to 2031]:

  • North America
  • Europe
  • Asia Pacific
  • The Rest of the World

Country Wise Outlook for the Industrial AI Market

Major players in the market are expanding their operations and forming strategic partnerships to strengthen their positions. The image below highlights recent developments by major industrial AI producers in key regions: the USA, China, India, Japan, and Germany.

  • United States: In the U.S., industrial AI is seeing increased adoption in predictive maintenance and supply chain optimization. Companies like GE and Siemens are integrating AI into their industrial systems to enhance operational efficiency and reduce downtime.
  • China: China is focusing on AI-driven automation and robotics in manufacturing. Major players like Huawei and Alibaba are investing in AI technologies to improve production processes and boost industrial capabilities, supporting the country's "Made in China 2025" initiative.
  • Germany: Germany is leveraging AI for Industry 4.0 initiatives, focusing on smart factories and advanced manufacturing. German firms are deploying AI for real-time process monitoring and quality control, aiming to enhance precision and reduce production costs.
  • India: In India, industrial AI is being adopted to improve manufacturing efficiency and resource management. Startups and established companies are using AI to optimize supply chains and enhance production capabilities, supporting the country's industrial growth.
  • Japan: Japan is advancing AI in robotics and automation, particularly for precision manufacturing and electronics. Japanese companies are integrating AI into production lines to enhance automation and increase manufacturing accuracy and speed.

Features of the Global Industrial AI Market

Market Size Estimates: Industrial AI market size estimation in terms of value ($B).

Trend and Forecast Analysis: Market trends (2019 to 2024) and forecasts (2025 to 2031) by various segments and regions.

Segmentation Analysis: Industrial AI market size by type, application, and region in terms of value ($B).

Regional Analysis: Industrial AI market breakdown by North America, Europe, Asia Pacific, and Rest of the World.

Growth Opportunities: Analysis of growth opportunities in different types, applications, and regions for the industrial AI market.

Strategic Analysis: This includes M&A, new product development, and the competitive landscape of the industrial AI market.

Analysis of competitive intensity of the industry based on Porter's Five Forces model.

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This report answers the following 11 key questions:

  • Q.1. What are some of the most promising, high-growth opportunities for the industrial AI market by type (software and hardware), application (glass manufacturing, semiconductor manufacturing, automotive, machinery, chemical, oil & gas, packaging, and others), and region (North America, Europe, Asia Pacific, and the Rest of the World)?
  • Q.2. Which segments will grow at a faster pace and why?
  • Q.3. Which region will grow at a faster pace and why?
  • Q.4. What are the key factors affecting market dynamics? What are the key challenges and business risks in this market?
  • Q.5. What are the business risks and competitive threats in this market?
  • Q.6. What are the emerging trends in this market and the reasons behind them?
  • Q.7. What are some of the changing demands of customers in the market?
  • Q.8. What are the new developments in the market? Which companies are leading these developments?
  • Q.9. Who are the major players in this market? What strategic initiatives are key players pursuing for business growth?
  • Q.10. What are some of the competing products in this market and how big of a threat do they pose for loss of market share by material or product substitution?
  • Q.11. What M&A activity has occurred in the last 5 years and what has its impact been on the industry?

Table of Contents

1. Executive Summary

2. Global Industrial AI Market : Market Dynamics

  • 2.1: Introduction, Background, and Classifications
  • 2.2: Supply Chain
  • 2.3: Industry Drivers and Challenges

3. Market Trends and Forecast Analysis from 2019 to 2031

  • 3.1. Macroeconomic Trends (2019-2024) and Forecast (2025-2031)
  • 3.2. Global Industrial AI Market Trends (2019-2024) and Forecast (2025-2031)
  • 3.3: Global Industrial AI Market by Type
    • 3.3.1: Software
    • 3.3.2: Hardware
  • 3.4: Global Industrial AI Market by Application
    • 3.4.1: Glass Manufacturing
    • 3.4.2: Semiconductor Manufacturing
    • 3.4.3: Automotive
    • 3.4.4: Machinery
    • 3.4.5: Chemical
    • 3.4.6: Oil & Gas
    • 3.4.7: Packaging
    • 3.4.8: Others

4. Market Trends and Forecast Analysis by Region from 2019 to 2031

  • 4.1: Global Industrial AI Market by Region
  • 4.2: North American Industrial AI Market
    • 4.2.1: North American Industrial AI Market by Type: Software and Hardware
    • 4.2.2: North American Industrial AI Market by Application: Glass Manufacturing, Semiconductor Manufacturing, Automotive, Machinery, Chemical, Oil & Gas, Packaging, and Others
  • 4.3: European Industrial AI Market
    • 4.3.1: European Industrial AI Market by Type: Software and Hardware
    • 4.3.2: European Industrial AI Market by Application: Glass Manufacturing, Semiconductor Manufacturing, Automotive, Machinery, Chemical, Oil & Gas, Packaging, and Others
  • 4.4: APAC Industrial AI Market
    • 4.4.1: APAC Industrial AI Market by Type: Software and Hardware
    • 4.4.2: APAC Industrial AI Market by Application: Glass Manufacturing, Semiconductor Manufacturing, Automotive, Machinery, Chemical, Oil & Gas, Packaging, and Others
  • 4.5: ROW Industrial AI Market
    • 4.5.1: ROW Industrial AI Market by Type: Software and Hardware
    • 4.5.2: ROW Industrial AI Market by Application: Glass Manufacturing, Semiconductor Manufacturing, Automotive, Machinery, Chemical, Oil & Gas, Packaging, and Others

5. Competitor Analysis

  • 5.1: Product Portfolio Analysis
  • 5.2: Operational Integration
  • 5.3: Porter's Five Forces Analysis

6. Growth Opportunities and Strategic Analysis

  • 6.1: Growth Opportunity Analysis
    • 6.1.1: Growth Opportunities for the Global Industrial AI Market by Type
    • 6.1.2: Growth Opportunities for the Global Industrial AI Market by Application
    • 6.1.3: Growth Opportunities for the Global Industrial AI Market by Region
  • 6.2: Emerging Trends in the Global Industrial AI Market
  • 6.3: Strategic Analysis
    • 6.3.1: New Product Development
    • 6.3.2: Capacity Expansion of the Global Industrial AI Market
    • 6.3.3: Mergers, Acquisitions, and Joint Ventures in the Global Industrial AI Market
    • 6.3.4: Certification and Licensing

7. Company Profiles of Leading Players

  • 7.1: Siemens
  • 7.2: IBM
  • 7.3: Microsoft
  • 7.4: Cisco Systems
  • 7.5: General Electric Company
  • 7.6: Rockwell Automation