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Toward artificial intelligence and machine learning-enabled frameworks for improved predictions of lifecycle environmental impacts of functional materials and devices

Taofeeq Ibn‐Mohammed, K.B. Mustapha, Mohammed Ghassan Abdulkareem, Aitana Uclés Fuensanta, Vincenzo Pecunia, C.E.J. Dancer

2023MRS Communications44 citationsDOIOpen Access PDF

Abstract

Abstract The application of functional materials and devices (FM&Ds) underpins numerous products and services, facilitating improved quality of life, but also constitutes a huge environmental burden on the natural ecosystem, prompting the need to quantify their value-chain impact using the bottom-up life cycle assessment (LCA) framework. As the volume of FM&Ds manufactured increases, the LCA calculation speed is constrained due to the time-consuming nature of data collection and processing. Moreover, the bottom-up LCA framework is limited in scope, being typically static or retrospective, and laced with data gap challenges, resulting in the use of proxy values, thus limiting the relevance, accuracy, and quality of results. In this prospective article, we explore how these challenges across all phases of the bottom-up LCA framework can be overcome by harnessing new insights garnered from computationally guided parameterized models enabled by artificial intelligence (AI) methods, such as machine learning (ML), applicable to all products in general and specifically to FM&Ds, for which adoption remains underexplored. Graphical abstract

Topics & Concepts

Scope (computer science)Proxy (statistics)Computer scienceLimitingEcosystem servicesRelevance (law)Life-cycle assessmentSustainabilityArtificial intelligenceMachine learningRisk analysis (engineering)EngineeringEcosystemBusinessMechanical engineeringProduction (economics)BiologyLawMacroeconomicsPolitical scienceEcologyEconomicsProgramming languageGreen IT and SustainabilityEnvironmental Impact and SustainabilitySustainable Supply Chain Management
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