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Enabling Autonomous Structural Inspections with Tiny Machine Learning on UAVs
Mid Sweden University, Faculty of Science, Technology and Media, Department of Computer and Electrical Engineering (2023-).ORCID iD: 0000-0002-8617-0435
Mid Sweden University, Faculty of Science, Technology and Media, Department of Computer and Electrical Engineering (2023-).ORCID iD: 0000-0002-2336-5390
Mid Sweden University, Faculty of Science, Technology and Media, Department of Computer and Electrical Engineering (2023-).ORCID iD: 0000-0001-9572-3639
Mid Sweden University, Faculty of Science, Technology and Media, Department of Computer and Electrical Engineering (2023-).ORCID iD: 0000-0002-8382-0359
2024 (English)In: 2024 IEEE Sensors Applications Symposium, SAS 2024 - Proceedings, IEEE conference proceedings, 2024Conference paper, Published paper (Refereed)
Abstract [en]

Visual structural inspections in Structural Health Monitoring (SHM) are an important method to ensure the safety and long lifetime of infrastructures. Unmanned Aerial Vehicles (UAVs) with Deep Learning (DL) have gained in popularity to automate these inspections. Yet, the vast majority of research focuses on algorithmic innovations that neglect the availability of reliable generalized DL models, as well as the effect that the model's energy consumption would have on the UAV flight time. This paper highlights the performance of 14 popular CNN models with less than six million parameters for crack detection in concrete structures. Seven of these models were successfully deployed to a low-power, resource-constrained mi-crocontroller using Tiny Machine Learning (TinyML). Among the deployed models, MobileNetV1-x0.25 achieves the highest test accuracy (75.83%) and F1-Score (0.76), the second-lowest flash memory usage (273.5 kB), the second-lowest RAM usage (317.1kB), the fourth-fastest single-trial inference time (15.8ms), and the fourth-lowest number of Multiply-Accumulate operations (MACC) (42126514). Lastly, a hypothetical study of the DJI Mini 4 Pro UAV demonstrated that the TinyML model's energy consumption has a negligible impact on the UAV flight time (34 minutes vs. 33.98 minutes). Consequently, this feasibility study paves the way for future developments towards more efficient, autonomous unmanned structural health inspections. 

Place, publisher, year, edition, pages
IEEE conference proceedings, 2024.
Keywords [en]
convolutional neural networks, damage classification, embedded systems, structure health monitoring, Tiny machine learning, unmanned aerial vehicles
National Category
Computer Sciences
Identifiers
URN: urn:nbn:se:miun:diva-52591DOI: 10.1109/SAS60918.2024.10636583ISI: 001304520300085Scopus ID: 2-s2.0-85203704393ISBN: 9798350369250 (print)OAI: oai:DiVA.org:miun-52591DiVA, id: diva2:1900649
Conference
2024 IEEE Sensors Applications Symposium, SAS 2024 - Proceedings
Available from: 2024-09-24 Created: 2024-09-24 Last updated: 2025-09-25Bibliographically approved
In thesis
1. Efficient On-Device Intelligence for Structural Health Monitoring: A TinyML Perspective
Open this publication in new window or tab >>Efficient On-Device Intelligence for Structural Health Monitoring: A TinyML Perspective
2025 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Structural Health Monitoring (SHM) plays a pivotal role in ensuring the safety, longevity, and reliability of critical infrastructure. While machine learning (ML) and deep learning (DL) have shown promise in automating SHM tasks, most existing approaches are tailored for high-resource computing platforms and overlook the unique constraints posed by low-power, resource-constrained embedded systems such as microcontrollers (MCUs) and edge devices. This thesis addresses this critical gap by systematically exploring, developing, and optimizing lightweight ML and DL algorithms for efficient on-device intelligence in SHM applications, particularly focusing on acoustic emission (AE)-based and vision-based modalities under the emerging framework of Tiny Machine Learning (TinyML).

The research is organized around three central objectives. First, both lightweight Artificial Neural Networks and Convolutional Neural Networks (CNNs) models are designed and optimized for real-time damage classification using raw AE signals and crack detection tasks using vision data. These models are tailored for deployment on highly resource-constrained MCUs, with particular attention to memory efficiency, inference latency, and energy consumption. Second, the thesis investigates the impact of model complexity and applies a range of model compression techniques such as post-training quantization (PTQ), quantization-aware training (QAT), pruning, and weight clustering. A comprehensive benchmark across various TinyML-compatible toolchains (TensorFlow Lite, STM32Cube.AI, ONNX) evaluates the performance trade-offs of these techniques in real deployment scenarios. Third, recognizing the scarcity of labeled AE data in real-world applications, the research explores both traditional and deep learning-based data augmentation methods, including jittering, warping, and DCGAN-generated synthetic signals, to improve model robustness and generalization.

The study includes extensive empirical evaluations using multiple publicly available AE and image datasets, covering diverse damage types in concrete and composite materials. On the vision side, UAV-based crack detection and segmentation pipelines are implemented using lightweight CNN backbones such as MobileNetV1x0.25 and U-Net variants. These models are trained and validated with various image preprocessing strategies, including grayscale conversion, contrast adjustment, denoising, and morphological operations. A greedy algorithm is also introduced to explore optimal preprocessing combinations. Performance is assessed through metrics such as F1-score, precision, recall, mIoU, model size, inference latency, memory footprint, and per-inference energy consumption, both before and after deployment to embedded devices like OpenMV and STM32 platforms.

The findings demonstrate that, with careful model design, quantization, and data augmentation, it is feasible to achieve high-performance SHM inference directly on-device. Notably, certain models maintained classification accuracies above 90% while reducing energy consumption by more than 60% through compression. For vision tasks, preprocessing pipelines significantly enhanced crack detection accuracy, and deployment on UAV platforms confirmed the viability of real-time aerial inspections with negligible impact on flight time.

In summary, this thesis makes significant contributions to the field of embedded SHM by bridging the gap between algorithmic advances and real-world deployment. It provides a structured pipeline for transitioning from conventional, cloud-centric SHM workflows to fully embedded, energy efficient, and real-time monitoring systems empowered by TinyML. The insights gained herein are expected to inform future developments in both civil infrastructure diagnostics and low-power AI systems.

Place, publisher, year, edition, pages
Sundsvall: Mid Sweden University, 2025. p. 62
Series
Mid Sweden University doctoral thesis, ISSN 1652-893X ; 434
National Category
Electrical Engineering, Electronic Engineering, Information Engineering
Identifiers
urn:nbn:se:miun:diva-55336 (URN)978-91-90017-30-2 (ISBN)
Public defence
2025-09-26, C312, Holmgatan 10, Sundsvall, 09:00 (English)
Opponent
Supervisors
Note

Vid tidpunkten för disputationen var följande delarbete opublicerat: delarbete 8 inskickat.

At the time of the doctoral defence the following paper was unpublished: paper 8 submitted.

Available from: 2025-08-26 Created: 2025-08-20 Last updated: 2025-09-25Bibliographically approved

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Zhang, YuxuanMartinez Rau, LucianoOelmann, BengtBader, Sebastian

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