Predictive Modeling of Effluent Temperature in SAT Systems Using Ambient Meteorological Data: Implications for Infiltration Management
- URL: http://arxiv.org/abs/2507.04050v1
- Date: Sat, 05 Jul 2025 14:20:09 GMT
- Title: Predictive Modeling of Effluent Temperature in SAT Systems Using Ambient Meteorological Data: Implications for Infiltration Management
- Authors: Roy Elkayam,
- Abstract summary: This study develops and evaluates predictive models for effluent temperature in the upper recharge layer of a Shafdan SAT system recharge basin.<n>Results highlight pronounced seasonal temperature cycles and the importance of topsoil temperature in governing the thermal profile of the infiltrating effluent.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurate prediction of effluent temperature in recharge basins is essential for optimizing the Soil Aquifer Treatment (SAT) process, as temperature directly influences water viscosity and infiltration rates. This study develops and evaluates predictive models for effluent temperature in the upper recharge layer of a Shafdan SAT system recharge basin using ambient meteorological data. Multiple linear regression (MLR), neural networks (NN), and random forests (RF) were tested for their predictive accuracy and interpretability. The MLR model, preferred for its operational simplicity and robust performance, achieved high predictive accuracy (R2 = 0.86-0.87) and was used to estimate effluent temperatures over a 10-year period. Results highlight pronounced seasonal temperature cycles and the importance of topsoil temperature in governing the thermal profile of the infiltrating effluent. The study provides practical equations for real-time monitoring and long-term planning of SAT operations.
Related papers
- Optimizing Temperature for Language Models with Multi-Sample Inference [47.14991144052361]
This paper addresses the challenge of automatically identifying the (near)-optimal temperature for different large language models.<n>We provide a comprehensive analysis of temperature's role in performance optimization, considering variations in model architectures, datasets, task types, model sizes, and predictive accuracy.<n>We propose a novel entropy-based metric for automated temperature optimization, which consistently outperforms fixed-temperature baselines.
arXiv Detail & Related papers (2025-02-07T19:35:25Z) - Accurate Prediction of Temperature Indicators in Eastern China Using a Multi-Scale CNN-LSTM-Attention model [0.0]
We propose a weather prediction model based on a multi-scale convolutional CNN-LSTM-Attention architecture.<n>The model integrates Convolutional Neural Networks (CNN), Long Short-Term Memory (LSTM) networks, and attention mechanisms.<n> Experimental results show that the model performs excellently in predicting temperature trends with high accuracy.
arXiv Detail & Related papers (2024-12-11T00:42:31Z) - Calibrating Language Models with Adaptive Temperature Scaling [58.056023173579625]
We introduce Adaptive Temperature Scaling (ATS), a post-hoc calibration method that predicts a temperature scaling parameter for each token prediction.
ATS improves calibration by over 10-50% across three downstream natural language evaluation benchmarks compared to prior calibration methods.
arXiv Detail & Related papers (2024-09-29T22:54:31Z) - Weather Prediction Using CNN-LSTM for Time Series Analysis: A Case Study on Delhi Temperature Data [0.0]
This study explores a hybrid CNN-LSTM model to enhance temperature forecasting accuracy for the Delhi region.
We employed both direct and indirect methods, including comprehensive data preprocessing and exploratory analysis, to construct and train our model.
Experimental results indicate that the CNN-LSTM model significantly outperforms traditional forecasting methods in terms of both accuracy and stability.
arXiv Detail & Related papers (2024-09-14T11:06:07Z) - ExtremeCast: Boosting Extreme Value Prediction for Global Weather Forecast [57.6987191099507]
We introduce Exloss, a novel loss function that performs asymmetric optimization and highlights extreme values to obtain accurate extreme weather forecast.
We also introduce ExBooster, which captures the uncertainty in prediction outcomes by employing multiple random samples.
Our solution can achieve state-of-the-art performance in extreme weather prediction, while maintaining the overall forecast accuracy comparable to the top medium-range forecast models.
arXiv Detail & Related papers (2024-02-02T10:34:13Z) - Observation-Guided Meteorological Field Downscaling at Station Scale: A
Benchmark and a New Method [66.80344502790231]
We extend meteorological downscaling to arbitrary scattered station scales and establish a new benchmark and dataset.
Inspired by data assimilation techniques, we integrate observational data into the downscaling process, providing multi-scale observational priors.
Our proposed method outperforms other specially designed baseline models on multiple surface variables.
arXiv Detail & Related papers (2024-01-22T14:02:56Z) - Long-term drought prediction using deep neural networks based on geospatial weather data [75.38539438000072]
High-quality drought forecasting up to a year in advance is critical for agriculture planning and insurance.
We tackle drought data by introducing an end-to-end approach that adopts a systematic end-to-end approach.
Key findings are the exceptional performance of a Transformer model, EarthFormer, in making accurate short-term (up to six months) forecasts.
arXiv Detail & Related papers (2023-09-12T13:28:06Z) - Lidar Light Scattering Augmentation (LISA): Physics-based Simulation of
Adverse Weather Conditions for 3D Object Detection [60.89616629421904]
Lidar-based object detectors are critical parts of the 3D perception pipeline in autonomous navigation systems such as self-driving cars.
They are sensitive to adverse weather conditions such as rain, snow and fog due to reduced signal-to-noise ratio (SNR) and signal-to-background ratio (SBR)
arXiv Detail & Related papers (2021-07-14T21:10:47Z) - Statistical Post-processing for Gridded Temperature Forecasts Using
Encoder-Decoder Based Deep Convolutional Neural Networks [0.0]
Japan Meteorological Agency (JMA) has been operating gridded temperature guidance for predicting snow amount and precipitation type.
It has been difficult to correct a temperature field when NWP models did not predict the location of a front correctly or when the observed temperature was extremely cold or hot.
In this paper, encoder-decoder-based convolutional neural networks (CNNs) were employed to predict temperatures at the surface around the Kanto district.
arXiv Detail & Related papers (2021-03-02T05:28:31Z) - A Transfer Learning-based State of Charge Estimation for Lithium-Ion
Battery at Varying Ambient Temperatures [14.419790834463548]
State of charge (SoC) estimation is important to provide a stable and efficient environment for Lithium-ion batteries (LiBs) powered devices.
Most data-driven SoC models are built for a fixed ambient temperature, which neglect the high sensitivity of LiBs to temperature and may cause severe prediction errors.
Our proposed method not only reduces prediction errors at fixed temperatures (e.g., reduced by 24.35% at -20degC, 49.82% at 25degC) but also improves prediction accuracies at new temperatures.
arXiv Detail & Related papers (2021-01-11T05:26:37Z) - Statistical Downscaling of Temperature Distributions from the Synoptic
Scale to the Mesoscale Using Deep Convolutional Neural Networks [0.0]
One of the promising applications is developing a statistical surrogate model that converts the output images of low-resolution dynamic models to high-resolution images.
Our study evaluates a surrogate model that downscales synoptic temperature fields to mesoscale temperature fields every 6 hours.
If the surrogate models are implemented at short time intervals, they will provide high-resolution weather forecast guidance or environment emergency alerts at low cost.
arXiv Detail & Related papers (2020-07-20T06:24:08Z)
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.