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Interactive Advanced MOF Water Harvester Simulator

Advanced MOF Water Harvester Simulator
Advanced MOF Water Harvester Simulator

Advanced MOF Water Harvester Simulator

Developed By : Ir. MD Nursyazwi

Inspired by the Reticular Chemistry and Water Harvesting Work of Professor Omar Yaghi

Operational Protocol: Defining the Harvesting Environment

This module provides a predictive simulation of Atmospheric Water Harvesting (AWH) using Metal-Organic Frameworks (MOFs). It determines the requisite MOF mass to achieve a specific daily water production target at defined ambient humidity conditions.

Honorable Mention: This simulator is built upon the breakthrough principles of reticular chemistry and AWH technology, pioneered by Professor Omar Yaghi, focusing on MOF materials with high water capacity and regeneration potential.

  1. Select the MOF structure (e.g., MOF-801) optimized for water uptake.
  2. Specify the experimental Average Relative Humidity (%) and Absolute Temperature (K) of the environment.
  3. Input your Target Daily Water Production (L/day) for the community or application.
  4. Execute the "Run Simulation" command and analyze the quantitative and visual outputs.

Input Parameters: Materials and Thermodynamics

Multiscale Visualization: Unit Cell and Engineering Scale

The 3D view presents a stylized MOF Unit Cell (molecular scale) clearly separated from the Engineering Mass Indicator (process scale). The height of the indicator is dynamically scaled logarithmically against the required MOF mass in kilograms.

Visualization Legend

Metal Nodes (Secondary Building Units)
Organic Linkers (Bridging Ligands)
Adsorbed Water Molecules (H₂O)

Required MOF Mass Indicator (log(M_MOF))

Interact: Click and drag inside the 3D window to control the rotational orientation of the MOF structure.

Quantitative Output: Performance Metrics and Mass Balance

Predicted Daily Water Yield (Q_yield) at RH [%]: ---
MOF Utilization Percentage (Relative to Q_max): ---
Calculated MOF Mass (M_MOF) for Target Production [kg]: ---
Overall Engineering Verdict: ---

Uptake Curve Analysis: Water Yield Visualization

The Uptake Curve plots the quantitative relationship between the Water Yield (L/kg/day) and the Relative Humidity (RH). The blue point indicates your current simulation condition.

Recommended Resources & Learning Tools

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Physicochemical Basis: Model and Theory

Atmospheric Water Harvesting (AWH): This technology uses MOFs—highly porous, crystalline polymers—to capture water vapor directly from ambient air. The key to AWH is selecting MOFs that can efficiently adsorb large quantities of water at low relative humidity (adsorption phase) and release it using minimal thermal energy (regeneration phase).

The MOFs featured here, like MOF-801 (Zr-fumarate), exemplify the advancements in reticular chemistry by Omar Yaghi's team, focusing on:

  1. Hydrophobicity/Hydrophilicity Balance: To allow high capacity while resisting degradation.
  2. Step-Shaped Isotherms: Enabling efficient water capture at a specific RH threshold and near-complete release at low energy.

Engineering Methodology (Simplified Yield Model)

The simulator determines the required material mass by coupling two fundamental principles:

  1. Yield Modeling: A simplified capacity model estimates the Daily Water Yield (Q_yield) in [L/kg/day] based on the chosen MOF and the average Relative Humidity (RH). It assumes negligible yield below the MOF's binding RH (RH_bind) and a linear increase up to maximum yield (Q_max).
  2. Mass Balance: The required MOF mass (M_MOF) is calculated directly by dividing the Target Daily Water Production by the MOF's predicted daily water yield.

The calculation is: Required MOF Mass (kg) = Target Daily Water (L) / Water Yield (L/kg/day).

References

Computational Integrity: Ensuring Numerical Accuracy

To guarantee the results are reliable for engineering applications, the simulator adheres to rigorous computational protocols, focusing on data precision and defensive coding.

1. Data Precision and Floating-Point Arithmetic

The calculation relies on the IEEE 754 floating-point standard. While the model is simplified, display values are rigorously rounded (toFixed()) for practical interpretation, ensuring consistency.

2. State Management for Calculation Integrity

A robust calculation methodology requires a clear and traceable data flow, ensuring all results are consistent with the current inputs. Values like Q_yield and M_MOF are derived and are re-computed every time an input (like Humidity or Target) changes.

3. Handling Edge Cases and Defensive Coding

The application employs defensive coding practices to prevent crashes and ensure meaningful output when inputs are invalid:

Edge Case Problem Description Methodological Solution
Yield of Zero Occurs if the Relative Humidity (RH) is below the MOF's binding threshold (RH_bind). Guard Clause: If yield is calculated as zero, the required mass returns Infinity (displayed as 'IMPRACTICAL') to signal the MOF cannot be passively regenerated in the current climate.
Null or NaN Inputs Results in NaN if the user enters non-numeric text or leaves a field blank. Input Sanitization: A validation check at the start of runSimulation() ensures the calculation only proceeds if all inputs are valid numbers (> 0).

Comments

  1. Did you know MOFs need to be regenerated with minimal heat? The #ReticularChemistry breakthrough with materials like MOF-801 focuses on getting the perfect balance between high capacity and low #RegenerationEnergy. Super efficient! 🔬

    ReplyDelete
  2. This is how we fight global water scarcity! 🌍 The simulator demonstrates how efficient MOFs like MOF-303 can achieve high Daily Water Yield in dry climates. Less mass + less energy = a practical solution for remote communities. #Water4All #ClimateSolutions

    ReplyDelete

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