Published December 11, 2023 | Version v1
Journal article Open

Explainability as the key ingredient for AI adoption in Industry 5.0 settings

  • 1. Knowledgebiz Consulting, Almada, Portugal
  • 2. Center of Technology and System (CTS), Instituto de Desenvolvimento de Novas Tecnologias (UNINOVA)
  • 3. AiDEAS OU
  • 4. Institute for the Management of Information Systems (IMSI), ATHENA RC
  • 5. ROR icon Ubitech (Greece)
  • 6. Fraunhofer FOKUS
  • 7. Suite5
  • 8. ROR icon Asociación Innovalia
  • 9. Athena Research and Innovation Center In Information Communication & Knowledge Technologies

Description

Explainable Artificial Intelligence (XAI) has gained significant attention as a means to address the transparency and interpretability challenges posed by black box AI models. In the context of the manufacturing industry, where complex problems and decision-making processes are widespread, the XMANAI platform emerges as a solution to enable transparent and trustworthy collaboration between humans and machines. By leveraging advancements in XAI and catering the prompt collaboration between data scientists and domain experts, the platform enables the construction of interpretable AI models that offer high transparency without compromising performance. This paper introduces the approach to building the XMANAI platform and highlights its potential to resolve the “transparency paradox” of AI. The platform not only addresses technical challenges related to transparency but also caters to the specific needs of the manufacturing industry, including lifecycle management, security, and trusted sharing of AI assets. The paper provides an overview of the XMANAI platform main functionalities, addressing the challenges faced during the development and presenting the evaluation framework to measure the performance of the delivered XAI solutions. It also demonstrates the benefits of the XMANAI approach in achieving transparency in manufacturing decision-making, fostering trust and collaboration between humans and machines, improving operational efficiency, and optimizing business value.

Files

frai-06-1264372.pdf

Files (4.6 MB)

Name Size Download all
md5:b909e43b431174ce11553cbdf4ff1b04
4.6 MB Preview Download

Additional details

Funding

European Commission
XMANAI - Explainable Manufacturing Artificial Intelligence 957362