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Developing a Novel Pattern Mining Model to Discover Hidden Patterns in Fukushima Traffic Congestion Big Data
- Japan Road Transportation Information Center (JARTIC) has set up the sensor network to monitor traffic congestion in Fukushima.
- Each road-segment in this network generates data at every 5-minute interval.
- Previous year, we have developed a data warehouse technology that generates data frames at 10 times faster than the state-of-the-art.
- This year, we plan to develop a novel pattern algorithm to discover hidden patterns.
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2025Äê4ÔÂ

4ÔÂ7ÈÕ
Introduction to Traffic Information Systems: Understanding JARTIC and TCSS
ÊÚ˜IÄÚÈÝ£ºWe covered the role of the Japan Road Traffic Information Center (JARTIC) and the Traffic Congestion Statistical System (TCSS). We explored how JARTIC collects and distributes traffic information through 133 centers nationwide. The importance of real-time traffic data for road users was highlighted.

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4ÔÂ14ÈÕ
Data Collection Techniques: Sensors and Measurement Points
ÊÚ˜IÄÚÈÝ£ºWe learned about the data collection process using sensors installed at over 40,000 measurement points. The types of sensors, such as ultrasonic vehicle detectors, and the significance of collecting traffic volume and occupancy time every 5 minutes were thoroughly analyzed.

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4ÔÂ21ÈÕ
Real-Time Traffic Analysis: Interpreting Congestion Data
ÊÚ˜IÄÚÈÝ£ºThis class focused on the processing and interpretation of live traffic data, including the classification of congestion status into traffic jam, congestion, no congestion, and unknown (sensor abnormality). We practiced accessing this data through the TCSS interface.

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2025Äê5ÔÂ

5ÔÂ5ÈÕ
ÊÚ˜IÄÚÈÝ£º Temporal and Spatial Resolution of TCSS Data :
Analyzes how TCSS offers high-resolution temporal (5-minute intervals) and spatial (road link-level and mesh code) data. This granularity allows researchers to study traffic dynamics over time and space with precision.

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5ÔÂ12ÈÕ
ÊÚ˜IÄÚÈÝ£ºCongestion Detection and Classification Algorithms in TCSS:
Focuses on the definitions and criteria used to detect and classify congestion. It explains how TCSS uses speed thresholds and vehicle detection data to classify congestion into levels such as "light" or "heavy" across various road types.

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5ÔÂ19ÈÕ
ÊÚ˜IÄÚÈÝ£ºVisualization Techniques: Mapping and Graphical Representation in TCSS.
Details the system's ability to visualize traffic data through interactive maps, Excel tables, and statistical graphs. It discusses how these visualization features support both operational monitoring and academic research.

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2025Äê6ÔÂ

6ÔÂ2ÈÕ
ÊÚ˜IÄÚÈÝ£ºTraffic Data Normalization and Anomaly Handling:
We removed unnecessary unnamed columns, detected abnormal traffic values, and applied threshold-based normalization to standardize the dataset for modeling.

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6ÔÂ9ÈÕ
ÊÚ˜IÄÚÈÝ£ºMissing Value Imputation in Traffic Datasets:
We explored multiple imputation techniques--mean, median, mode, KNN, forward fill, and backward fill--to handle missing data. After evaluation, mean imputation was selected as the best method.

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6ÔÂ16ÈÕ
ÊÚ˜IÄÚÈÝ£ºDeep Learning Models for Traffic Forecasting:
We experimented with various time-series deep learning models including LSTM, Bi-LSTM, GRU, Autoencoders, Transformers, and CNNs to predict traffic patterns.

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6ÔÂ23ÈÕ
ÊÚ˜IÄÚÈÝ£ºLSTM-Based Traffic Flow Prediction:
We implemented an LSTM model that performed well due to its layered architecture and ability to capture long-term dependencies in traffic data.

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2025Äê7ÔÂ

7ÔÂ7ÈÕ
ÊÚ˜IÄÚÈÝ£ºConducted an exploration of forecasting models for traffic data. Studied the working mechanisms of various models and how they process traffic information. Analyzed how data flows through multiple layers in deep learning architectures, ocusing on preprocessing, feature extraction, and prediction.

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7ÔÂ14ÈÕ
ÊÚ˜IÄÚÈÝ£ºImplemented a deep learning model for traffic data prediction using Long Short-Term Memory (LSTM) networks. Designed the architecture of the deep learning model including input, hidden, and output layers. Focused on capturing temporal dependencies in traffic data using sequential modeling.

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7ÔÂ21ÈÕ
ÊÚ˜IÄÚÈÝ£ºDeveloped and implemented time-based forecasting techniques. Evaluated the model performance over various time intervals to improve forecasting accuracy. ocused on daily and hourly traffic patterns for better resolution in predictions.

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7ÔÂ28ÈÕ
ÊÚ˜IÄÚÈÝ£ºWorked on a multi-task learning model to enhance traffic data forecasting. Designed and compared multiple models to handle different forecasting tasks simultaneously. Finalized and selected the best-performing model based on accuracy and generalization performance.

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2025Äê10ÔÂ

10ÔÂ6ÈÕ
ÊÚ˜IÄÚÈÝ£º
?Learning to use Jartic road traffic software to understand its data acquisition process.
?Collecting traffic data from the platform for further analysis.
?Gaining insights into traffic flow patterns and congestion trends through data exploration.

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10ÔÂ20ÈÕ
ÊÚ˜IÄÚÈÝ£º
?Learning to use the Macro Recorder software for automating repetitive tasks.
?Collecting all available traffic data for comprehensive analysis.
?Preparing the dataset for further processing and pattern identification.

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10ÔÂ27ÈÕ
ÊÚ˜IÄÚÈÝ£º
?Studying pattern mining techniques to analyse traffic congestion trends.
?Exploring algorithms that identify frequent and time-dependent congestion patterns.
?Aiming to uncover insights for improving traffic flow and management.

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2025Äê11ÔÂ

11ÔÂ4ÈÕ
ÊÚ˜IÄÚÈÝ£º
?Process the traffic dataset to ensure consistency, completeness, and readiness for symbolic conversion.
?Analyze the key attributes of the traffic data to determine which features require symbolic abstraction.
? Design an appropriate symbolic representation schema for transforming raw numerical and categorical traffic values into symbolic forms.

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11ÔÂ10ÈÕ
ÊÚ˜IÄÚÈÝ£º
?Implement the transformation process that converts the preprocessed traffic data into a symbolic dataset.
?Identify patterns and relationships in the dataset that guide the learning of symbolic transformation rules.
?Learn and formalize the rules that map raw traffic features into higher-level symbolic constructs.

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11ÔÂ17ÈÕ
ÊÚ˜IÄÚÈÝ£º
?Develop symbolic temporal rules that capture dynamic changes and time-dependent behavior within the traffic data.
?Study knowledge graph principles to understand how symbolic and temporal relationships should be modeled in a graph structure.
?Construct a knowledge-graph-ready dataset that aligns with graph database requirements for efficient querying and reasoning.

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