AI in Renewable Energy Market Size, Share & Trends Analysis Report, By Deployment Type (On premises, and Cloud), By Component (Solution and Services), By End-Use Industry, By Region, Forecasts, 2025-2034

Report Id: 2756 Pages: 170 Last Updated: 27 May 2025 Format: PDF / PPT / Excel / Power BI
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Segmentation of AI in the Renewable Energy Market

AI in the Renewable Energy Market- By Deployment

  • On-premises
  • Cloud

ai in renewable energy

AI in the Renewable Energy Market- By End-Use Industry

  • Energy Generation
  • Energy Transmission
  • Energy Distribution
  • Utilities

AI in the Renewable Energy Market- By Component Type

  • Solution
  • Service

AI in the Renewable Energy Market- By Region

North America-

  • The US
  • Canada

Europe-

  • Germany
  • The UK
  • France
  • Italy
  • Spain
  • Rest of Europe

Asia-Pacific-

  • China
  • Japan
  • India
  • South Korea
  • South East Asia
  • Rest of Asia Pacific

Latin America-

  • Brazil
  • Mexico
  • Argentina
  • Rest of Latin America

 Middle East & Africa-

  • GCC Countries
  • South Africa
  • Rest of Middle East and Africa

Chapter 1. Methodology and Scope
1.1. Research Methodology
1.2. Research Scope & Assumptions

Chapter 2. Executive Summary

Chapter 3. Global Artificial Intelligence in Renewable Energy Market Snapshot

Chapter 4. Global Artificial Intelligence in Renewable Energy Market Variables, Trends & Scope
4.1. Market Segmentation & Scope
4.2. Drivers
4.3. Challenges
4.4. Trends
4.5. Investment and Funding Analysis
4.6. Industry Analysis – Porter’s Five Forces Analysis
4.7. Competitive Landscape & Market Share Analysis
4.8. Impact of Covid-19 Analysis

Chapter 5. Market Segmentation 1: by Deployment Type Estimates & Trend Analysis
5.1. by Deployment Type & Market Share, 2024 & 2034
5.2. Market Size (Value (US$ Mn)) & Forecasts and Trend Analyses, 2021 to 2034 for the following by Deployment Type:

5.2.1. On-premises
5.2.2. Cloud

Chapter 6. Market Segmentation 2: by End-Use Industry Estimates & Trend Analysis
6.1. by End-Use Industry & Market Share, 2024 & 2034
6.2. Market Size (Value (US$ Mn)) & Forecasts and Trend Analyses, 2021 to 2034 for the following by End-Use Industry:

6.2.1. Energy Generation
6.2.2. Energy Transmission
6.2.3. Energy Distribution
6.2.4. Utilities

Chapter 7. Market Segmentation 3: by Component Type Estimates & Trend Analysis
7.1. by Component Type & Market Share, 2024 & 2034
7.2. Market Size (Value (US$ Mn)) & Forecasts and Trend Analyses, 2021 to 2034 for the following by Component Type:

7.2.1. Solution
7.2.2. Service

Chapter 8. Artificial Intelligence in Renewable Energy Market Segmentation 4: Regional Estimates & Trend Analysis

8.1. North America
8.1.1. North America Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Deployment Type, 2021-2034
8.1.2. North America Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by End-Use Industry, 2021-2034
8.1.3. North America Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Component Type, 2021-2034
8.1.4. North America Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by country, 2021-2034

8.2. Europe
8.2.1. Europe Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Deployment Type, 2021-2034
8.2.2. Europe Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by End-Use Industry, 2021-2034
8.2.3. Europe Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Component Type, 2021-2034
8.2.4. Europe Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by country, 2021-2034

8.3. Asia Pacific
8.3.1. Asia Pacific Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Deployment Type, 2021-2034
8.3.2. Asia Pacific Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by End-Use Industry, 2021-2034
8.3.3. Asia-Pacific Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Component Type, 2021-2034
8.3.4. Asia Pacific Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by country, 2021-2034

8.4. Latin America

8.4.1. Latin America Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Deployment Type, 2021-2034
8.4.2. Latin America Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by End-Use Industry, 2021-2034
8.4.3. Latin America Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Component Type, 2021-2034
8.4.4. Latin America Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by country, 2021-2034

8.5. Middle East & Africa
8.5.1. Middle East & Africa Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Deployment Type, 2021-2034
8.5.2. Middle East & Africa Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by End-Use Industry, 2021-2034
8.5.3. Middle East & Africa Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by Component Type, 2021-2034
8.5.4. Middle East & Africa Artificial Intelligence in Renewable Energy Market Revenue (US$ Million) Estimates and Forecasts by country, 2021-2034

Chapter 9. Competitive Landscape
9.1. Major Mergers and Acquisitions/Strategic Alliances
9.2. Company Profiles

9.2.1. Flex Ltd.
9.2.2. Enel Spa
9.2.3. Alpiq Holding Ltd.
9.2.4. General Electric
9.2.5. Enphase Energy
9.2.6. Siemens AG
9.2.7. Origami
9.2.8. Vestas
9.2.9. Atos SE
9.2.10. App Orchid
9.2.11. Other Market Players

Research Design and Approach

This study employed a multi-step, mixed-method research approach that integrates:

  • Secondary research
  • Primary research
  • Data triangulation
  • Hybrid top-down and bottom-up modelling
  • Forecasting and scenario analysis

This approach ensures a balanced and validated understanding of both macro- and micro-level market factors influencing the market.

Secondary Research

Secondary research for this study involved the collection, review, and analysis of publicly available and paid data sources to build the initial fact base, understand historical market behaviour, identify data gaps, and refine the hypotheses for primary research.

Sources Consulted

Secondary data for the market study was gathered from multiple credible sources, including:

  • Government databases, regulatory bodies, and public institutions
  • International organizations (WHO, OECD, IMF, World Bank, etc.)
  • Commercial and paid databases
  • Industry associations, trade publications, and technical journals
  • Company annual reports, investor presentations, press releases, and SEC filings
  • Academic research papers, patents, and scientific literature
  • Previous market research publications and syndicated reports

These sources were used to compile historical data, market volumes/prices, industry trends, technological developments, and competitive insights.

Secondary Research

Primary Research

Primary research was conducted to validate secondary data, understand real-time market dynamics, capture price points and adoption trends, and verify the assumptions used in the market modelling.

Stakeholders Interviewed

Primary interviews for this study involved:

  • Manufacturers and suppliers in the market value chain
  • Distributors, channel partners, and integrators
  • End-users / customers (e.g., hospitals, labs, enterprises, consumers, etc., depending on the market)
  • Industry experts, technology specialists, consultants, and regulatory professionals
  • Senior executives (CEOs, CTOs, VPs, Directors) and product managers

Interview Process

Interviews were conducted via:

  • Structured and semi-structured questionnaires
  • Telephonic and video interactions
  • Email correspondences
  • Expert consultation sessions

Primary insights were incorporated into demand modelling, pricing analysis, technology evaluation, and market share estimation.

Data Processing, Normalization, and Validation

All collected data were processed and normalized to ensure consistency and comparability across regions and time frames.

The data validation process included:

  • Standardization of units (currency conversions, volume units, inflation adjustments)
  • Cross-verification of data points across multiple secondary sources
  • Normalization of inconsistent datasets
  • Identification and resolution of data gaps
  • Outlier detection and removal through algorithmic and manual checks
  • Plausibility and coherence checks across segments and geographies

This ensured that the dataset used for modelling was clean, robust, and reliable.

Market Size Estimation and Data Triangulation

Bottom-Up Approach

The bottom-up approach involved aggregating segment-level data, such as:

  • Company revenues
  • Product-level sales
  • Installed base/usage volumes
  • Adoption and penetration rates
  • Pricing analysis

This method was primarily used when detailed micro-level market data were available.

Bottom Up Approach

Top-Down Approach

The top-down approach used macro-level indicators:

  • Parent market benchmarks
  • Global/regional industry trends
  • Economic indicators (GDP, demographics, spending patterns)
  • Penetration and usage ratios

This approach was used for segments where granular data were limited or inconsistent.

Hybrid Triangulation Approach

To ensure accuracy, a triangulated hybrid model was used. This included:

  • Reconciling top-down and bottom-up estimates
  • Cross-checking revenues, volumes, and pricing assumptions
  • Incorporating expert insights to validate segment splits and adoption rates

This multi-angle validation yielded the final market size.

Forecasting Framework and Scenario Modelling

Market forecasts were developed using a combination of time-series modelling, adoption curve analysis, and driver-based forecasting tools.

Forecasting Methods

  • Time-series modelling
  • S-curve and diffusion models (for emerging technologies)
  • Driver-based forecasting (GDP, disposable income, adoption rates, regulatory changes)
  • Price elasticity models
  • Market maturity and lifecycle-based projections

Scenario Analysis

Given inherent uncertainties, three scenarios were constructed:

  • Base-Case Scenario: Expected trajectory under current conditions
  • Optimistic Scenario: High adoption, favourable regulation, strong economic tailwinds
  • Conservative Scenario: Slow adoption, regulatory delays, economic constraints

Sensitivity testing was conducted on key variables, including pricing, demand elasticity, and regional adoption.

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Frequently Asked Questions

AI in Renewable Energy Market Size was valued at USD 863.9 Mn in 2024 and is predicted to reach USD 5896.9 Mn by 2034

AI in Renewable Energy Market is expected to grow at a 21.3% CAGR during the forecast period for 2025-2034

Flex Ltd., Enel Spa, Alpiq Holding Ltd., General Electric, Enphase Energy, Siemens AG, Origami, Vestas, Atos SE, App Orchid, and Other Prominent Playe

Deployment,Component Type and End-Use Industry are the key segments of the AI in Renewable Energy Market.

North America region is leading the AI in Renewable Energy Market.
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