DOI : https://doi.org/10.5281/zenodo.19512594
- Open Access

- Authors : Jeevan Kumar B, Dr. Nandakumar N
- Paper ID : IJERTV15IS031667
- Volume & Issue : Volume 15, Issue 03 , March – 2026
- Published (First Online): 11-04-2026
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License:
This work is licensed under a Creative Commons Attribution 4.0 International License
Automatic Detection, Estimation and Filling of Potholes using Sensor-Integrated Semi-Automated Robot
Jeevan Kumar B
Department of Engineering Design Government College of Technology Coimbatore, India
Dr. Nandakumar N
Department of Mechanical Engineering Government College of Technology Coimbatore, India
Abstract – Road potholes represent a critical infrastructure challenge globally, particularly in developing nations like India. This paper presents a comprehensive framework for an automated pothole detection, estimation, and filling system using a semi-automated robot integrated with infrared (IR) and ultrasonic sensors, precision dispensing mechanisms, and IoT connectivity [1]. The system employs physics-based geometric approaches for pothole identification with ±2 mm depth accuracy, utilizing a lead screw mechanism for material dispensing and a weighted roller for surface leveling. Integration of Arduino microcontroller, H-Bridge motor drivers, and ESP8266 Wi-Fi module enables autonomous navigation and remote monitoring. Field testing demonstrates 40% reduction in repair cycle time, 70% reduction in manual labor requirements, and significant improvements in operational safety and consistency [1].
Keywords – Pothole detection, semi-automated robot, ultrasonic sensing, lead screw mechanism, IoT monitoring, road maintenance automation
-
INTRODUCTION
-
Background
Road infrastructure forms the economic backbone of modern societies, directly influencing travel safety, vehicle longevity, and transportation efficiency [2]. Potholesstructural failures in asphalt pavements caused by water intrusion and cyclic traffic loadingcreate hazardous driving conditions resulting in accidents, vehicle damage (tire punctures, suspension failures), and substantial economic losses running into billions annually [2].
-
Limitations of Traditional Methods
Conventional pothole management relies on infrequent manual inspections, suffering from fundamental deficiencies: labor-intensive operations, inconsistent subjective assessments, incomplete spatial coverage, and significant delays between detection and repair. Manual repair exposes
workers to traffic hazards, produces inconsistent fill quality, and necessitates repeated repairs due to inadequate material application [3]. These limitations justify substantial investment in automated detection and repair systems.
-
Research Gaps and Motivation
Despite advances in artificial intelligence and sensor technologies, critical gaps remain: limited integration of detection with automated filling capabilities, insufficient field validation of integrated systems, challenges in robust operation across diverse environmental conditions, and inadequate assessment of labor reduction benefits. This project addresses these gaps through a comprehensive semi- automated system combining detection, dispensing, and IoT monitoring.
-
-
System Components and Architecture
-
Sensing Systems
Infrared Sensor: Operates at 5V, 20 mA power consumption, detects surface irregularities with 1-2 mm resolution across 2- 30 cm effective range. Provides horizontal surface anomaly data, particularly effective in low-light conditions [4].
Ultrasonic Sensor: Measures distance using echo propagation
time: where m/s. technical specifications: 5V operation, ±2 mm accuracy, 40 kHz frequency, 4.5 m maximum range. Provides quantitative depth measurements essential for volume calculations [4].
Example Calculation: For echo time s:
mm
-
Control and Processing Systems
Arduino Microcontroller (ATmega328P): Central processing unit integrating sensor inputs, executing control algorithms, and managing actuator outputs. Specifications: 16 MHz clock,
32 KB flash memory, 2 KB SRAM, ~50 mA power consumption, ~10 ms response time.
H-Bridge Motor Driver (L298N): Provides bidirectional DC motor control through PWM signals. For 200 kg robot mass with 0.08 m wheel radius, required force per wheel:
N; torque:
Nm.
DC Motors and Spur Gears: Four motors drive wheel assemblies. Motor specifications: 160 Nm rated torque at 3500 RPM, 12V operation, ~30 A current draw per motor. Spur gears ensure efficient power transfer.
-
Material Dispensing and Leveling
Lead Screw Mechanism: Converts rotational motion to linear actuation with 5 mm pitch. Hopper volume: 30 L (72 kg concrete capacity). For 50 mm vertical movement:
rotations[5].
Volume Dispensing Formula: where is pitch and
is rotations.
Surface Leveling Roller: Weighted mechanism with compression spring applies ~500 N distributed force:
N. This compacts fresh concrete to ~95% theoretical density.
-
Power and Connectivity
12V Rechargeable Battery: 105 Ah lithium-ion capacity. Power budget for 5A system consumption over 2-hour
mission: Ah; with 80% usable capacity: Ah.
ESP8266 Wi-Fi Module: Enables real-time cloud communication. Specifications: 3.3V operation, 170 mA transmission current, 0.56 W power consumption, IEEE
802.11 standard, ~100-300 m range.
-
-
Mathematical Modeling and Pothole Estimation
-
Volume Calculation
Pothole volume determined from sensor measurements:
Example: 300 mm × 300 mm × 125 mm pothole:
-
Material Dispensing Rate
For concrete density kg/m³:
Motor speed and lead screw pitch are adjusted to dispense precisely this quantity, preventing both under- and over- filling.
-
Navigation Velocity
Robot velocity controlled by motor RPM and wheel diameter (0.2 m):
At 100 RPM: m/s (practical terrain speed: 0.5-0.8 m/s)
-
-
Structural Analysis and Design Validation
Finite Element Analysis validated component design under operational loads[5].
-
Hopper Thickness Analysis
FEA evaluated three steel thickness variants under 72 kg concrete load:
Parameter
1 mm
Thickness
2 mm
Thickness
5 mm
Thickness
Max Deformation
33.94 mm
14.2 mm
1.055 mm
Max Stress
High (unsafe)
High (unsafe)
89.69 MPa
Assessment
Unsuitable
Unsuitable
Safe (yield
~250
MPa)
Recommendation: 5 mm steel hopper ensures structural safety with minimal deflection, preventing material spillage.
-
Stress Analysis
-
mm Hopper Holding Plate Results:
Maximum von Mises stress: 8.97 × 10 Pa (89.69 MPa)
Location: Left edge (constraint region) Minimum stress: 17,891 Pa (right edge)
Conclusion: Safe operation within elastic limits for mild steel (yield strength ~250 MPa)
-
-
Operational Methodology
-
Initialization and Detection
Upon activation, the Arduino initializes all sensors, motors, and communication modules. The robo traverses designated roadways while IR and ultrasonic sensors continuously scan the surface. When sensor data indicates pothole characteristics (ultrasonic depth >50 mm; IR intensity deviation exceeding threshold), detection algorithms trigger [6]:
Robot motion halts via motor driver signal
Pothole boundary determination through sensor sweep GPS coordinate logging and status transmission
-
Dimension Estimation and Material Calculation
Sensor data determines pothole geometry:
Depth: Calculated from ultrasonic echo time Length/Width: From sensor array sweep
Volume: Computed as
Required lead screw rotations:
-
Dispensing and Leveling
Arduino activates dispensing motor for precisely rotations, releasing calibrated concrete. Upon deposition, the weighted roller traverses the patch, applying distributed force for uniform compaction. Spring loading adapts to surface variations.
-
Data Transmission and Continuation
Upon completion:
IoT module transmits repair documentation (GPS, timestamp, dimensions, material)
Status update sent to municipal dashboard
Robot resumes roadway scanning until hopper depletion or task completion
-
-
Experimental Validation and Results
-
Detection Accuracy
Field testing across multiple road sections with varying pothole conditions:
Detection success rate: 98.7% (false positive: 1.3%) Depth accuracy: ±2.1 mm mean absolute error
Area estimation: ±3.2% vs. manual measurement Wet condition reliability: 96.8% (comparable to dry)
-
Dispensing Precision
Lead screw mechanism validation:
Volume accuracy: ±5% of calculated requirement Material wastage: <2% spillage
Dispensing time: 45-120 seconds (volume-dependent) Mechanism reliability: 99.1% over 500+ cycles
-
Performance Comparison: Manual vs. Semi- Automated
Metric
Manual Method
Semi- Automated
Improvement
Repair time per pothole
45-60
min
25-35 min
40% reduction
Labor requirement
4-6
workers
1-2
operators
70% reduction
Material efficiency
65-75%
93-98%
25-30%
improvement
Safety incidents
High
Low
Significant
Operational cost/repair
$150- 200
$80-120
40% cost reduction
-
Surface Leveling Quality
Post-repair validation:
Surface deviation: <2 mm (comparable to manual repairs) Durability: Withstood equivalent of 10,000+ vehicle passes Friction compatibility: Adequate for safe operation
-
IoT System Performance
Data transmission success: 99.4% Transmission latency: 320 ms average
Cloud retention: Complete maintenance records Mobile app refresh: <2 seconds
-
-
Discussion and Technical Insights
-
Sensor Fusion Advantages
The complementary IR and ultrasonic sensor combination proved instrumental for reliable detection. IR sensors identify surface anomalies in adverse lighting; ultrasonic sensors provide quantitative measurements essential for volume estimation. This fusion approach achieved higher reliability than single-modality systems[4][5].
-
Economic Impact
The 40% reduction in repair time and 70% reduction in labor requirements represent substantial economic benefits. Large- scale deployment across city road networks could generate annual savings exceeding 30-40% of current maintenance expenditures while improving repair quality and consistency.
-
Future Enhancement Opportunities
The modular architecture supports multiple enhancement pathways:
Advanced AI Integration: YOLO-based deep learning models for enhanced detection
Autonomous Navigation: LiDAR and HD maps for fully autonomous operation
Predictive Maintenance: Machine learning for proactive identification of failure-prone sections
Multi-Robot Coordination: Swarm robotics for distributed large-scale deployment
-
-
Conclusion
This paper presents a comprehensive framework for automated pothole detection, estimation, and repair through integrated dual-sensor systems, precision dispensing, IoT connectivity, and embedded control algorithms. The semi- automated robot successfully addresses critical limitations of manual management by delivering:
High Detection Accuracy: ±2 mm depth measurement enabling precise material calculation
Precise Dispensing: ±5% volume accuracy with <2% wastage
Superior Repair Quality: <2 mm surface deviation from adjacent pavement
Operational Efficiency: 40% cycle time reduction, 70% labor reduction
Enhanced Safety: Elimination of worker traffic exposure
Real-Time Monitoring: IoT integration enabling centralized oversight
Experimental validation confirmed system robustness and practical deployment feasibility. FEA validated component design for safe, durable operations. The modular architecture supports future enhancements and scalable deployment across large road networks.
This automated system represents a significant advance in road maintenance technology, addressing persistent infrastructure challenges through innovative integration of sensing, robotics, and information technologies. Successful prototype validation supports transition toward operational deployment, promising enhanced public safety, extended infrastructure longevity, and improved transportation system efficiency.
-
References
-
Boopathi, D., et al. (2023). “Automatic Detection and Filling of Potholes Using Semi-Automated Robot.” International Research Journal of Modernization in Engineering Technology and Science, 5(5), 148-153.
-
Prasanna, S., et al. (2020). “Image Processing-Based Pothole Detection Using Edge Detection and Morphological Filtering.” International Journal of Engineering Research, 8(4), 213-222.
-
Rajeswari, S. (2021). “Vibration Sensor and GPS Integrated Pothole Monitoring System.” Journal of Transportation Engineering, 45(2), 145-153.
-
Zhao, J., et al. (2020). “Automated Pothole Detection with YOLO Algorithm.” IEEE Transactions on Intelligent Transportation Systems, 21(3), 1234-1242.
-
Kokate, A., & Khochare, S. (2019). “Smartphone-Based Real-Time Pothole Detection Using Deep Learning.” Machine Vision and Applications, 30(5), 765-774.
-
Chen, L., et al. (2024). “Real-Time Pothole Mapping via Road Surface Vibration Analysis.” Journal of Infrastructure Systems, 30(1), 107-115.
