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Enterprise AI Analysis: Artificial intelligence in environmental research: bibliometric, text mining and content analysis

Enterprise AI Analysis

Revolutionizing Environmental Research with AI

This comprehensive analysis of "Artificial intelligence in environmental research: bibliometric, text mining and content analysis" reveals how AI is transforming environmental problem-solving. We've synthesized key findings to highlight strategic opportunities for enterprise-level AI adoption.

Executive Impact at a Glance

Key metrics demonstrating the rapid growth and influence of AI in environmental research.

0% Recent Publication Growth (2018-2024)
0 Total Publications Analyzed
0 Top Productive Journal: Sustainability
0 Top Cited Journal: Sci. of Total Environment

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Digitalization & Sustainability
Waste Management
Prediction & Forecasting
Environmental Management
Machine Learning
Sustainable Supply Chain
DSS for Water & Landuse
Air Pollution
Cleaner Production (Industry 4.0)
Water/Wastewater Treatment
Disaster Risk Management

Digitalization and Environmental Sustainability

This cluster explores the intersection of digitalization (including AI) and environmental sustainability. It highlights applications in urban water resource planning and the optimization of water resource management, noting the positive impact on sustainable production, pollution control, waste management, and urban sustainability. However, challenges include design flaws, governance difficulties, and the potential for digitalization to lead to increased energy demand and e-waste if not focused on sustainability.

Waste Management

Research in this area focuses on AI applications for solid waste management, including predicting waste properties, optimizing energy/emission reduction, logistics, and planning. While AI (especially ANN) is widely used for forecasting waste generation, limitations stem from inadequate and proprietary data, making replication difficult for AI models in this domain.

Prediction and Forecasting

AI plays a crucial role in predicting environmental phenomena such as CPB strength, wastewater quality indicators, and even COVID-19 spread. Models like PSO-BRT, SVR, RT, GMDH, and ANN demonstrate high accuracy in forecasting, with ANN being particularly popular for groundwater level modeling due to its speed and ability to avoid local minima.

Environmental Management

This cluster covers ML applications for wildfire science and management, anomaly detection, harmful algal bloom prediction, water management, and plant species identification for conservation. Common techniques include RF, BRT, SVM, and ANNs, favored for their simple interpretation. Deep learning models like LSTM show great potential for algal bloom prediction.

Machine Learning

ML is employed in geoscience and related fields, including geochemistry, hydrology, and air quality prediction. Hybrid models like PLS-SVM often show better accuracy than individual models. Applications range from mapping agricultural drought hazards to generating groundwater spring potential maps. ANN is the most popular for classifying minerals, while RF is best for lithology classification.

Sustainable Supply Chain

This theme focuses on optimizing supply chains for environmental sustainability, including water resources management, food supply networks, vehicle routing, and building processes. Heuristic and meta-heuristic methods, such as ACO, are frequently used to reduce costs, fuel consumption, and emissions, thereby contributing to circular economy strategies and energy efficiency.

Decision Support System for Water & Landuse Management

Older articles in this cluster highlight DSS as a valuable instrument for environmental and resource planning. AI techniques, particularly fuzzy inference systems, are crucial for assessing water quality in complex hydrological systems. GIS-based DSS supports sustainable biomass exploitation and urban planning by integrating ecological indicators.

Air Pollution

AI is applied for monitoring and surveillance of air pollution, including particulate matter (PM) forecasting. Conceptual architectures integrate AI, IoT, and Blockchain for comprehensive environmental and health monitoring. Adaptive neuro-fuzzy techniques demonstrate high accuracy for PM forecasts, highlighting AI's effectiveness in trend forecasting.

Cleaner Production (Industry 4.0)

Recent research in this area connects Industry 4.0 and additive manufacturing with environmental sustainability. AI is identified as a key tool for improving environmental performance by predicting impacts, reducing energy/resource consumption, and real-time pollution monitoring. Optimization methods like PSO, ANN, GA are common for product design and development, enhancing resource conservation and precision agriculture.

Water/Wastewater Treatment

AI applications in water and wastewater treatment have seen a significant increase due to their ability to reduce operational costs and optimize chemical utilization. AI techniques successfully establish relationships between input variables and treatment output, with ANN being the most frequently adopted ML model for pollutant removal, often yielding better accuracy in hybrid methods.

Disaster Risk Management

This cluster features ensembles of AI and statistical methods for geospatial disaster and susceptibility prediction, including flash-flood and piping erosion susceptibility. Integration of AI, GIS, and remote sensing is crucial for innovative disaster research, offering solutions for tracking, geospatial exploration, and environmental impact analysis. The need for capacity development in developing countries is emphasized.

Key AI Technique Dominance

0 Text mining mentions of Artificial Neural Network (ANN)

Enterprise Process Flow

Data Collection
Bibliometric Analysis
Text Mining
Content Analysis
Future Directions Identification
Feature AI Methods Traditional Methods
Benefits
  • Reduced time & material use (e.g., chemical reagents).
  • Capability for multi-dimensional complex data.
  • Simplifies complex systems.
  • High accuracy (e.g., 99.8% evapotranspiration modeling).
  • Effective for pattern recognition (ANN, SVM).
  • Less prone to overfitting (SVM).
  • Simple implementation (DT).
  • Robustness for input data (GA).
  • Efficient visualization & mapping (pollution remediation).
  • Established empirical measurement.
  • Conventional computational techniques.
  • Direct causal understanding.
  • Lower complexity for specific tasks.
Challenges
  • Prone to overfitting (ANN in some cases).
  • Weak at logical/arithmetic problems (ANN).
  • "Black box" nature, limited inference.
  • Requires careful construction (GA).
  • Inadequate/proprietary data access.
  • Integrating heterogeneous data streams.
  • Potential for high energy consumption & e-waste.
  • Ethical issues, skill gap, poor infrastructure.
  • Time-demanding & intensive material use.
  • Limitations with multi-dimensional data.
  • Difficulty simplifying complex systems.
  • Lower accuracy/efficiency for some tasks.
  • High experimental costs.
  • Challenges in interpretation of complex relationships.

AI in Wastewater Treatment: Optimizing Operations

Context: ML models are extensively used in wastewater treatment research, with over 600 articles published in the last 25 years. This surge is driven by the high costs and extensive experimentation associated with traditional methods.

Application: AI optimization tools are crucial for interpreting complex relationships between operational variables (such as temperature, heating rate, and adsorbent surface area) and overall treatment performance. This capability significantly streamlines process optimization.

Results: Frequently used models like Artificial Neural Networks (ANN), Random Forest (RF), Support Vector Machines (SVM), Linear Regression (LR), Adaptive Neuro-Fuzzy Inference Systems (ANFIS), Decision Tree (DT), and Gradient Boosting (GB) demonstrate high effectiveness. For instance, combined SOM-StyleGAN achieved 0.97 fidelity for learning from diverse wastewater samples, highlighting AI's precision.

Impact: AI deployment in wastewater treatment leads to substantial reductions in operational costs and optimized chemical utilization. It significantly improves removal efficiency and adsorption rates, contributing to a more sustainable and economically viable treatment process.

Challenges: Despite its benefits, a primary challenge is the limited inference from some ML models, which can create difficulties in fully understanding the underlying basic processes and outcomes of wastewater treatment.

Calculate Your Potential AI ROI

Estimate the efficiency gains and cost savings AI can bring to your operations based on industry benchmarks.

Estimated Annual Savings $0
Reclaimed Employee Hours Annually 0

Your AI Implementation Roadmap

A structured approach to integrating AI into your enterprise, maximizing impact and minimizing disruption.

Phase 1: Discovery & Strategy Alignment

Comprehensive assessment of current operations, identification of AI opportunities, and alignment with enterprise-wide strategic goals. This includes data readiness checks and initial feasibility studies.

Phase 2: Pilot Development & Validation

Design and development of a targeted AI pilot project. This phase focuses on building a proof-of-concept, rigorous testing, and validation of initial models against performance benchmarks.

Phase 3: Scaled Implementation & Integration

Deployment of validated AI solutions across relevant departments. Deep integration with existing enterprise systems, ensuring seamless workflow and robust data pipelines.

Phase 4: Optimization & Continuous Improvement

Ongoing monitoring, performance tuning, and iterative enhancement of AI models. Establishment of feedback loops for continuous learning and adaptation to evolving business needs and environmental contexts.

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