Search Results for author: Mahshid Helali Moghadam

Found 10 papers, 4 papers with code

A Maritime Industry Experience for Vessel Operational Anomaly Detection: Utilizing Deep Learning Augmented with Lightweight Interpretable Models

no code implementations30 Dec 2023 Mahshid Helali Moghadam, Mateusz Rzymowski, Lukasz Kulas

We also develop lightweight surrogate models using random forest and decision tree to promote transparency and interpretability for the inference results of the deep learning models and assist the engineer with an agile assessment of the flagged anomalies.

Anomaly Detection Interpretable Machine Learning

Anomaly Detection Dataset for Industrial Control Systems

no code implementations11 May 2023 Alireza Dehlaghi-Ghadim, Mahshid Helali Moghadam, Ali Balador, Hans Hansson

Using Machine Learning (ML) for Intrusion Detection Systems (IDS) is a promising approach for ICS cyber protection, but the lack of suitable datasets for evaluating ML algorithms is a challenge.

Anomaly Detection Intrusion Detection

Machine Learning Testing in an ADAS Case Study Using Simulation-Integrated Bio-Inspired Search-Based Testing

no code implementations22 Mar 2022 Mahshid Helali Moghadam, Markus Borg, Mehrdad Saadatmand, Seyed Jalaleddin Mousavirad, Markus Bohlin, Björn Lisper

This paper presents an extended version of Deeper, a search-based simulation-integrated test solution that generates failure-revealing test scenarios for testing a deep neural network-based lane-keeping system.

Diversity

HMS-OS: Improving the Human Mental Search Optimisation Algorithm by Grouping in both Search and Objective Space

no code implementations19 Nov 2021 Seyed Jalaleddin Mousavirad, Gerald Schaefer, Iakov Korovin, Diego Oliva, Mahshid Helali Moghadam, Mehrdad Saadatmand

The human mental search (HMS) algorithm is a relatively recent population-based metaheuristic algorithm, which has shown competitive performance in solving complex optimisation problems.

Clustering

An Autonomous Performance Testing Framework using Self-Adaptive Fuzzy Reinforcement Learning

1 code implementation19 Aug 2019 Mahshid Helali Moghadam, Mehrdad Saadatmand, Markus Borg, Markus Bohlin, Björn Lisper

On the other hand, if the optimal performance testing policy for the intended objective in a testing process instead could be learned by the testing system, then test automation without advanced performance models could be possible.

reinforcement-learning Reinforcement Learning +3

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