Automatic Stack Velocity Picking Using an Unsupervised Ensemble Learning
Method
- URL: http://arxiv.org/abs/2205.08372v2
- Date: Tue, 23 May 2023 07:43:24 GMT
- Title: Automatic Stack Velocity Picking Using an Unsupervised Ensemble Learning
Method
- Authors: H.T. Wang, J.S. Zhang, C.X. Zhang, Z.X. Zhao, W.F. Geng
- Abstract summary: We suggest an Unsupervised Ensemble Learning (UEL) approach to achieving a balance between reliance on labeled data and picking accuracy.
UEL makes use of the data from nearby velocity spectra and other known sources to help pick efficient and reasonable velocity points.
UEL is more reliable and precise in auto-picking than traditional clustering-based techniques and the widely used Convolutional Neural Network (CNN) method.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Seismic velocity picking algorithms that are both accurate and efficient can
greatly speed up seismic data processing, with the primary approach being the
use of velocity spectra. Despite the development of some supervised deep
learning-based approaches to automatically pick the velocity, they often come
with costly manual labeling expenses or lack interpretability. In comparison,
using physical knowledge to drive unsupervised learning techniques has the
potential to solve this problem in an efficient manner. We suggest an
Unsupervised Ensemble Learning (UEL) approach to achieving a balance between
reliance on labeled data and picking accuracy, with the aim of determining the
stack velocity. UEL makes use of the data from nearby velocity spectra and
other known sources to help pick efficient and reasonable velocity points,
which are acquired through a clustering technique. Testing on both the
synthetic and field data sets shows that UEL is more reliable and precise in
auto-picking than traditional clustering-based techniques and the widely used
Convolutional Neural Network (CNN) method.
Related papers
- RECOVAR: Representation Covariances on Deep Latent Spaces for Seismic Event Detection [0.0]
We develop an unsupervised method for earthquake detection that learns to detect earthquakes from raw waveforms.
The performance is comparable to, and in some cases better than, some state-of-the-art supervised methods.
The approach has the potential to be useful for time series datasets from other domains.
arXiv Detail & Related papers (2024-07-25T21:33:54Z) - Incremental Self-training for Semi-supervised Learning [56.57057576885672]
IST is simple yet effective and fits existing self-training-based semi-supervised learning methods.
We verify the proposed IST on five datasets and two types of backbone, effectively improving the recognition accuracy and learning speed.
arXiv Detail & Related papers (2024-04-14T05:02:00Z) - Large-Scale OD Matrix Estimation with A Deep Learning Method [70.78575952309023]
The proposed method integrates deep learning and numerical optimization algorithms to infer matrix structure and guide numerical optimization.
We conducted tests to demonstrate the good generalization performance of our method on a large-scale synthetic dataset.
arXiv Detail & Related papers (2023-10-09T14:30:06Z) - FedLALR: Client-Specific Adaptive Learning Rates Achieve Linear Speedup
for Non-IID Data [54.81695390763957]
Federated learning is an emerging distributed machine learning method.
We propose a heterogeneous local variant of AMSGrad, named FedLALR, in which each client adjusts its learning rate.
We show that our client-specified auto-tuned learning rate scheduling can converge and achieve linear speedup with respect to the number of clients.
arXiv Detail & Related papers (2023-09-18T12:35:05Z) - Direct Localization in Underwater Acoustics via Convolutional Neural
Networks: A Data-Driven Approach [31.399611901926583]
Direct localization (DLOC) methods generally outperform their indirect two-step counterparts.
Underwater acoustic DLOC methods require prior knowledge of the environment.
We propose what is to the best of our knowledge, the first data-driven DLOC method.
arXiv Detail & Related papers (2022-07-20T22:40:11Z) - Pushing the Limits of Learning-based Traversability Analysis for
Autonomous Driving on CPU [1.841057463340778]
This paper proposes and evaluates a real-time machine learning-based Traversability Analysis method.
We show that integrating a new set of geometric and visual features and focusing on important implementation details enables a noticeable boost in performance and reliability.
The proposed approach has been compared with state-of-the-art Deep Learning approaches on a public dataset of outdoor driving scenarios.
arXiv Detail & Related papers (2022-06-07T07:57:34Z) - Automatic Velocity Picking Using a Multi-Information Fusion Deep
Semantic Segmentation Network [0.0]
Velocity picking, a critical step in seismic data processing, has been studied for decades.
Deep learning (DL) methods have produced good results on the seismic data with medium and high signal-to-noise ratios (SNR)
We propose a multi-information fusion network (MIFN) to estimate stacking velocity from the fusion information of velocity spectra and stack gather segments (SGS)
arXiv Detail & Related papers (2022-05-07T12:55:13Z) - Efficient training of lightweight neural networks using Online
Self-Acquired Knowledge Distillation [51.66271681532262]
Online Self-Acquired Knowledge Distillation (OSAKD) is proposed, aiming to improve the performance of any deep neural model in an online manner.
We utilize k-nn non-parametric density estimation technique for estimating the unknown probability distributions of the data samples in the output feature space.
arXiv Detail & Related papers (2021-08-26T14:01:04Z) - Straggler-Resilient Federated Learning: Leveraging the Interplay Between
Statistical Accuracy and System Heterogeneity [57.275753974812666]
Federated learning involves learning from data samples distributed across a network of clients while the data remains local.
In this paper, we propose a novel straggler-resilient federated learning method that incorporates statistical characteristics of the clients' data to adaptively select the clients in order to speed up the learning procedure.
arXiv Detail & Related papers (2020-12-28T19:21:14Z) - Bayesian Optimization with Machine Learning Algorithms Towards Anomaly
Detection [66.05992706105224]
In this paper, an effective anomaly detection framework is proposed utilizing Bayesian Optimization technique.
The performance of the considered algorithms is evaluated using the ISCX 2012 dataset.
Experimental results show the effectiveness of the proposed framework in term of accuracy rate, precision, low-false alarm rate, and recall.
arXiv Detail & Related papers (2020-08-05T19:29:35Z) - A Deep Unsupervised Feature Learning Spiking Neural Network with
Binarized Classification Layers for EMNIST Classification using SpykeFlow [0.0]
unsupervised learning technique of spike timing dependent plasticity (STDP) using binary activations are used to extract features from spiking input data.
The accuracies obtained for the balanced EMNIST data set compare favorably with other approaches.
arXiv Detail & Related papers (2020-02-26T23:47:35Z)
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.