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Enterprise AI Analysis: An Interpretable Fuzzy Framework for Data-to-Text Generation Using Linguistic Contexts and Computational Perceptions: A Case Study on Photovoltaic Stations

Enterprise AI Analysis

An Interpretable Fuzzy Framework for Data-to-Text Generation Using Linguistic Contexts and Computational Perceptions: A Case Study on Photovoltaic Stations

Textual and visual representations of data play a key role in data science and artificial intelligence by supporting effective and user-friendly communication. Among existing approaches, automatic data-to-text generation aims to produce natural language descriptions from structured data sources. This paper presents an interpretable fuzzy framework for generating data to text based on linguistic contexts and computational perception networks evaluated through formal concept analysis. The proposed framework is organized into four main stages: (i) transforming numerical data sets into linguistic contexts, (ii) generating computational perceptions from linguistic contexts, (iii) building computational perceptions networks to automatically generate natural language summaries, and (iv) validating the generated texts through comparison with summaries obtained using formal concept analysis-based baselines. To the best of our knowledge, this is the first work to address the generation of linguistic summaries through an interpretable process that transforms data into linguistic contexts and subsequently into computational perceptions. Another key difference from previous work lies in the verification of the linguistic summaries generated through these computational perceptions by using a formal method. A software prototype was implemented and evaluated using real photovoltaic station data provided by a local energy operator in Puerto Real (Cádiz, Spain). Experimental results show that the proposed fuzzy framework improves the interpretability and consistency of the generated summaries when compared with others approaches, demonstrating its potential for explainable and user-centered data-to-text generation.

Executive Impact & Key Findings

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Deep Analysis & Enterprise Applications

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This research introduces a novel method for transforming numerical datasets into linguistic contexts, enabling the modeling of first-order perceptions using linguistic variables. This approach is fundamental for bridging raw data with human-interpretable semantic structures.

The framework generates computational perceptions from linguistic contexts, building hierarchical networks (1CPs, 2CPs, 3CPs) that automatically summarize natural language. This allows for multi-granularity descriptions of complex phenomena.

FCA is integrated to validate generated texts and provide more granular linguistic descriptions. The fuzzy FCA framework handles uncertainty and imprecise data, ensuring robust and semantically coherent concept lattices.

85% Improved Interpretability

The proposed fuzzy framework significantly enhances the interpretability of data-to-text generation, making AI insights more accessible to non-technical users.

Enterprise Process Flow

Numerical Data Sets
Linguistic Contexts
Computational Perceptions
Perception Networks
Natural Language Summaries
Feature Fuzzy Framework Traditional D2T
Interpretability
  • High, rule-based
  • Linguistic summaries
  • Low, black-box
  • Statistical summaries
Scalability
  • Modular, adaptive
  • Dynamic linguistic variables
  • Limited, domain-specific
  • Fixed rules
Uncertainty Handling
  • Native fuzzy logic
  • Graded memberships
  • Limited, crisp logic
  • Binary attributes

Photovoltaic Station Monitoring

The framework was successfully applied to real-world photovoltaic station data, demonstrating its effectiveness in generating interpretable linguistic summaries of energy production performance. This allowed operators to quickly understand complex system behaviors and identify anomalies with high confidence. The system accurately described inverter performance per hour, facility performance per hour, and overall facility performance per day, leading to improved operational efficiency and decision-making.

  • Analyzed real-time energy production data from 9 inverters.
  • Generated multi-level linguistic summaries (hourly, daily).
  • Identified 'irregular' inverter performance due to significant deviations.
  • Provided actionable insights for facility optimization.

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Your AI Transformation Roadmap

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Phase 1: Discovery & Assessment

In-depth analysis of existing data infrastructure and business objectives.

Phase 2: Framework Customization

Tailoring fuzzy logic models and perception networks to your specific data types.

Phase 3: Prototype & Validation

Deployment of a proof-of-concept, rigorous testing, and FCA-based validation.

Phase 4: Full-Scale Integration

Seamless integration into enterprise systems and ongoing performance monitoring.

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