ISSN :2582-9793

Development of an Intelligent Fault Diagnosis Tool for iPhone Motherboards: Power Consumption Analysis Using Deep Learning

Original Research (Published On: 16-Jun-2025 )

Nalaka Lankasena

Adv. Artif. Intell. Mach. Learn., 5 (2):3784-3808

1. Nalaka Lankasena: University of Sri Jayewardenepura

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Article History: Received on: 08-Mar-25, Accepted on: 09-Jun-25, Published on: 16-Jun-25

Corresponding Author: Nalaka Lankasena

Email: nalaka@sjp.ac.lk

Citation: P.D.K. Madhubhashana, H.D.N.V. Jayasekara, G.D.G.N. Jayawardena, B.N.S. Lankasena, B.M. Seneviratne. (2025). Development of an Intelligent Fault Diagnosis Tool for iPhone Motherboards: Power Consumption Analysis Using Deep Learning. Adv. Artif. Intell. Mach. Learn.,5 (2 ):3784-3808.


Abstract

    

This study presents an intelligent microcontroller-based diagnostic tool and application designed to enhance fault detection accuracy and efficiency in iPhone motherboards, utilizing power consumption data and deep learning (DL) for real-time diagnostics. Integrating an RP2040 microcontroller and INA226 current sensor, the tool captures power patterns during boot-up, a method applicable across embedded systems and robotics for predictive fault analysis and maintenance. The tool, deployed in phone repair centers, has generated a comprehensive dataset of over 1,600 iPhone 6s devices with faults linked to 12 distinct power rails. Various deep learning models, including Convolutional Neural Networks (CNNs) and Long Short-Term Memory (LSTM) networks, were evaluated, with the LSTM achieving the highest accuracy (99%) and F1-score (0.997) for precise fault classification. This diagnostic application communicates with a central server, enabling a scalable and automated framework suitable for robotics and intelligent systems requiring power diagnostics. By introducing DL-based power consumption analysis, this study pioneers an approach with broad implications for intelligent maintenance in embedded and robotic systems. Our findings offer a foundation for faster, automated, and reliable diagnostics, potentially advancing fault management in robotic applications and other intelligent devices reliant on precise power monitoring and control.

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