Large-Scale Multipurpose Benchmark Datasets For Assessing Data-Driven Deep Learning Approaches For Water Distribution Networks
- URL: http://arxiv.org/abs/2404.15386v1
- Date: Tue, 23 Apr 2024 11:58:40 GMT
- Title: Large-Scale Multipurpose Benchmark Datasets For Assessing Data-Driven Deep Learning Approaches For Water Distribution Networks
- Authors: Andres Tello, Huy Truong, Alexander Lazovik, Victoria Degeler,
- Abstract summary: This work provides a collection of datasets that includes several small and medium size publicly available Water Distribution Networks (WDNs)
In total 1,394,400 hours of WDNs data operating under normal conditions is made available to the community.
- Score: 41.94295877935867
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Currently, the number of common benchmark datasets that researchers can use straight away for assessing data-driven deep learning approaches is very limited. Most studies provide data as configuration files. It is still up to each practitioner to follow a particular data generation method and run computationally intensive simulations to obtain usable data for model training and evaluation. In this work, we provide a collection of datasets that includes several small and medium size publicly available Water Distribution Networks (WDNs), including Anytown, Modena, Balerma, C-Town, D-Town, L-Town, Ky1, Ky6, Ky8, and Ky13. In total 1,394,400 hours of WDNs data operating under normal conditions is made available to the community.
Related papers
- Core-Set Selection for Data-efficient Land Cover Segmentation [16.89537279044251]
We propose six novel core-set selection methods for selecting important subsets of samples from remote sensing image segmentation datasets.<n>We benchmark these approaches against a random-selection baseline on three commonly used land cover classification datasets.<n>This result shows the importance and potential of data-centric learning for the remote sensing domain.
arXiv Detail & Related papers (2025-05-02T12:22:08Z) - Benchmarking Data Efficiency and Computational Efficiency of Temporal
Action Localization Models [42.06124795143787]
In temporal action localization, given an input video, the goal is to predict which actions it contains, where they begin, and where they end.
This work explores and measures how current deep temporal action localization models perform in settings constrained by the amount of data or computational power.
arXiv Detail & Related papers (2023-08-24T20:59:55Z) - Exploring Data Redundancy in Real-world Image Classification through
Data Selection [20.389636181891515]
Deep learning models often require large amounts of data for training, leading to increased costs.
We present two data valuation metrics based on Synaptic Intelligence and gradient norms, respectively, to study redundancy in real-world image data.
Online and offline data selection algorithms are then proposed via clustering and grouping based on the examined data values.
arXiv Detail & Related papers (2023-06-25T03:31:05Z) - LargeST: A Benchmark Dataset for Large-Scale Traffic Forecasting [65.71129509623587]
Road traffic forecasting plays a critical role in smart city initiatives and has experienced significant advancements thanks to the power of deep learning.
However, the promising results achieved on current public datasets may not be applicable to practical scenarios.
We introduce the LargeST benchmark dataset, which includes a total of 8,600 sensors in California with a 5-year time coverage.
arXiv Detail & Related papers (2023-06-14T05:48:36Z) - Dataset Distillation: A Comprehensive Review [76.26276286545284]
dataset distillation (DD) aims to derive a much smaller dataset containing synthetic samples, based on which the trained models yield performance comparable with those trained on the original dataset.
This paper gives a comprehensive review and summary of recent advances in DD and its application.
arXiv Detail & Related papers (2023-01-17T17:03:28Z) - Learning a Self-Expressive Network for Subspace Clustering [15.096251922264281]
We propose a novel framework for subspace clustering, termed Self-Expressive Network (SENet), which employs a properly designed neural network to learn a self-expressive representation of the data.
Our SENet can not only learn the self-expressive coefficients with desired properties on the training data, but also handle out-of-sample data.
In particular, SENet yields highly competitive performance on MNIST, Fashion MNIST and Extended MNIST and state-of-the-art performance on CIFAR-10.
arXiv Detail & Related papers (2021-10-08T18:06:06Z) - Exploring the Impacts from Datasets to Monocular Depth Estimation (MDE)
Models with MineNavi [5.689127984415125]
Current computer vision tasks based on deep learning require a huge amount of data with annotations for model training or testing.
In practice, manual labeling for dense estimation tasks is very difficult or even impossible, and the scenes of the dataset are often restricted to a small range.
We propose a synthetic dataset generation method to obtain the expandable dataset without burdensome manual workforce.
arXiv Detail & Related papers (2020-08-19T14:03:17Z) - NWPU-Crowd: A Large-Scale Benchmark for Crowd Counting and Localization [101.13851473792334]
We construct a large-scale congested crowd counting and localization dataset, NWPU-Crowd, consisting of 5,109 images, in a total of 2,133,375 annotated heads with points and boxes.
Compared with other real-world datasets, it contains various illumination scenes and has the largest density range (020,033)
We describe the data characteristics, evaluate the performance of some mainstream state-of-the-art (SOTA) methods, and analyze the new problems that arise on the new data.
arXiv Detail & Related papers (2020-01-10T09:26:04Z) - Neural Data Server: A Large-Scale Search Engine for Transfer Learning
Data [78.74367441804183]
We introduce Neural Data Server (NDS), a large-scale search engine for finding the most useful transfer learning data to the target domain.
NDS consists of a dataserver which indexes several large popular image datasets, and aims to recommend data to a client.
We show the effectiveness of NDS in various transfer learning scenarios, demonstrating state-of-the-art performance on several target datasets.
arXiv Detail & Related papers (2020-01-09T01:21:30Z) - DeGAN : Data-Enriching GAN for Retrieving Representative Samples from a
Trained Classifier [58.979104709647295]
We bridge the gap between the abundance of available data and lack of relevant data, for the future learning tasks of a trained network.
We use the available data, that may be an imbalanced subset of the original training dataset, or a related domain dataset, to retrieve representative samples.
We demonstrate that data from a related domain can be leveraged to achieve state-of-the-art performance.
arXiv Detail & Related papers (2019-12-27T02:05:45Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.