A Critical Discourse Analysis of Emotional Language in AI-Generated Climate Communication

Authors

Nor Fatin Abdul Jabar

Faculty of Education, Social Sciences & Humanities, Universiti Poly-Tech Malaysia (Malaysia)

Nurul Najwa Abu Bakar

Faculty of Education, Social Sciences & Humanities, Universiti Poly-Tech Malaysia (Malaysia)

Abdul Rauf Suhaimi

Faculty of Education, Social Sciences & Humanities, Universiti Poly-Tech Malaysia (Malaysia)

Norazidah Mohamad Isa

Faculty of Education, Social Sciences & Humanities, Universiti Poly-Tech Malaysia (Malaysia)

Article Information

DOI: 10.47772/IJRISS.2026.100500296

Subject Category: Artificial Intelligence

Volume/Issue: 10/5 | Page No: 4386-4404

Publication Timeline

Submitted: 2026-05-06

Accepted: 2026-05-11

Published: 2026-05-29

Abstract

Artificial intelligence is increasingly used in public communication campaigns related to environmental awareness, raising important questions about how automated systems construct emotional engagement and ecological responsibility through language. While climate communication frequently relies on affective and moral appeals to encourage collective environmental action, limited research has examined how generative AI reproduces these discursive strategies in climate-related texts. This study investigates the construction of emotional language in AI-generated climate communication using Fairclough’s three-dimensional model of Critical Discourse Analysis. The dataset comprises forty climate-related texts generated by a large language model through prompts centred on environmental responsibility, climate urgency, and sustainability advocacy. The analysis examines the textual features of emotional discourse, the discursive practices embedded within AI-generated narratives, and the broader ideological implications of automated environmental communication. The findings demonstrate that the generated texts consistently employ inclusive pronouns, evaluative adjectives, moral appeals, and future-oriented narratives to construct climate change as a shared human concern requiring immediate collective action. Empathy is strategically produced through emotionally charged vocabulary that positions environmental protection within a framework of moral obligation and global solidarity. However, the analysis also reveals that these AI-generated narratives frequently reproduce simplified and depoliticised representations of climate responsibility by foregrounding individual behavioural change while minimising structural, political, and institutional dimensions of the climate crisis. The study argues that generative AI systems do not merely replicate neutral information but actively reproduce dominant ideological patterns embedded within contemporary environmental discourse. By extending Critical Discourse Analysis into the context of AI-mediated communication, this research contributes to emerging scholarship on automated discourse, emotional persuasion, and the ideological implications of generative artificial intelligence in public communication.

Keywords

Artificial intelligence, climate communication, critical discourse analysis, emotional language, environmental discourse

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References

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