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Comparison of Vertex AI and Convolutional Neural Networks for Automatic Waste Sorting

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  • Jhonny Darwin Ortiz-Mata

    (Facultad de Ciencias e Ingeniería, Universidad Estatal de Milagro (UNEMI), Milagro 091050, Ecuador)

  • Xiomara Jael Oleas-Vélez

    (Facultad de Ciencias e Ingeniería, Universidad Estatal de Milagro (UNEMI), Milagro 091050, Ecuador)

  • Norma Alexandra Valencia-Castillo

    (Facultad de Ciencias e Ingeniería, Universidad Estatal de Milagro (UNEMI), Milagro 091050, Ecuador)

  • Mónica del Rocío Villamar-Aveiga

    (Facultad de Ciencias e Ingeniería, Universidad Estatal de Milagro (UNEMI), Milagro 091050, Ecuador)

  • David Elías Dáger-López

    (Facultad de Ciencias e Ingeniería, Universidad Estatal de Milagro (UNEMI), Milagro 091050, Ecuador)

Abstract

This study discusses the optimization of municipal solid waste management through the implementation of automated waste sorting systems, comparing two advanced artificial intelligence methodologies: Vertex AI and convolutional neural network (CNN) architectures, developed using TensorFlow. Automated solid waste classification is presented as an innovative technological approach that leverages advanced algorithms to accurately identify and segregate materials, addressing the inherent limitations of conventional sorting methods, such as high labor dependency, inaccuracies in material separation, and constrained scalability for processing large waste volumes. A system was designed for the classification of paper, plastic, and metal waste, integrating an Arduino Uno microcontroller, a Raspberry Pi, a high-resolution camera, and a robotic manipulator. The system was evaluated based on performance metrics including classification accuracy, response time, scalability, and implementation cost. The findings revealed that Xception achieved a flawless classification accuracy of 100% with an average processing time of 0.25 s, whereas Vertex AI, with an accuracy of 90% and a response time of 2 s, exceled in cloud scalability, making it ideal for resource-constrained environments. The findings highlight Xception’s superiority in high-precision applications and Vertex AI’s adaptability in scenarios demanding flexible deployment, advancing efficient and sustainable waste management solutions.

Suggested Citation

  • Jhonny Darwin Ortiz-Mata & Xiomara Jael Oleas-Vélez & Norma Alexandra Valencia-Castillo & Mónica del Rocío Villamar-Aveiga & David Elías Dáger-López, 2025. "Comparison of Vertex AI and Convolutional Neural Networks for Automatic Waste Sorting," Sustainability, MDPI, vol. 17(4), pages 1-23, February.
  • Handle: RePEc:gam:jsusta:v:17:y:2025:i:4:p:1481-:d:1588753
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    References listed on IDEAS

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    1. Ryan Alshaikh & Akmal Abdelfatah, 2024. "Optimization Techniques in Municipal Solid Waste Management: A Systematic Review," Sustainability, MDPI, vol. 16(15), pages 1-25, August.
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