OpenNeoMC:an Open-source Tool for Particle Transport Optimization that Combining OpenMC with NEORL

Related tags

NetworkingOpenNeoMC
Overview

OpenNeoMC:an Open-source Tool for Particle Transport Optimization that Combining OpenMC with NEORL

OpenMC is a community-developed Monte Carlo neutron and photon transport simulation code for particle transport. OpenMC was originally developed by members of the Computational Reactor Physics Group at the Massachusetts Institute of Technology starting in 2011.

NEORL (NeuroEvolution Optimization with Reinforcement Learning) is a set of implementations of hybrid algorithms combining neural networks and evolutionary computation based on a wide range of machine learning and evolutionary intelligence architectures. NEORL aims to solve large-scale optimization problems relevant to operation & optimization research, engineering, business, and other disciplines. NEORL was established in MIT back in 2020 with feedback, validation, and usage of different colleagues.

In OpenNeoMC, we combine these two open-source tools to empower particle transport with state-of-the-art optimization techniques. We firstly provide users with easy ways to install the framework that combines NEORL with OpenMC, and a simple example is available to test the framework. Then we offer two practical engineering optimization applications in nuclear physics. More applications that involve both optimization and nuclear physics will be added in the future. We highly welcome users and researchers in the nuclear area to contribute OpenNeoMC and solve engineering problems in this framework.

Installing OpenNeoMC

Installation on Linux/Mac with conda

Install Conda

Please install conda before proceeding, it will bring you convenience to install anaconda directly, which includes conda and other necessary python packages.

Install OpenMC

conda config --add channels conda-forge
conda search openmc

Create a new virtual environment named openneomc

conda create -n openneomc openmc

Test OpenMC

Follow with the official examples to test the OpenMC

Cross Section Configuration

You may encounter the no cross_sections.xml error when running OpenMC. This is caused by the missing of nuclear data, you could solve it refer to Cross Section Configuration

Download cross section data

Various cross section data are available on the OpenMC official website, from the OpenMC team, LANL, etc. In OpenNeoMC, we use ENDF/B-VII.1 in default. But if you have specific purpose, you can use other data that you need.

After downloading the cross-section data file, configure it as an environmental variable as follows.

Add environmental variables

## Temporary methods
# in python
import os
os.environ['OPENMC_CROSS_SECTIONS'] = '/PATH/cross_sections.xml'
# in shell
export OPENMC_CROSS_SECTIONS=../cross_sections.xml

## Once for all: you can modify the ~/.bashrc to configure environmental variables
# open ~/.bashrc
vim ~/.bashrc
# add the following command in the end 
export OPENMC_CROSS_SECTIONS=/PATH/cross_sections.xml
# update 
source ~/.bashrc

Install NEORL

Install python 3.7 to make sure the stable run of tensorflow-1.14.0

conda install python=3.7 
pip install neorl==1.6

Check the version of sciki-learn, if it is 1.x, downgrade the scikit-learn version to 0.24.2

# check version
python -c 'import sklearn; print(sklearn.__version__)'

# downgrade the sklearn version if necessary
pip install scikit-learn==0.24.2

Check if you have install NEORL successfully by unit test.

neorl

If you see the 'NEORL' logo, then you have prepared the OpenNeoMC framework, congratulations!

Test OpenNeoMC

Let's test OpenNeoMC by the 'pin_cell_test.py' example.

Remember to configure environmental variables as above!

# run 
python pin_cell_test.py

If you see the 'NEORL' logo and the log information of OpenMC, then congratulations!

Installing OpenNeoMC with Docker on Linux/Mac/Windows

Installing OpenNeoMC with docker is highly recommended! In this way, you need not worry about issues like cross-section data and software compatibility, etc. All you need to do are simply pull the image and run it in your own machine with any OS.

Install Docker

Follow the official tutorial to Install docker on your machine: get docker

Install OpenNeoMC

After installing docker, your can easily install use OpenNeoMC framework within only four steps:

# Pull docker images from dock hub  
sudo docker pull 489368492/openneomc

# Check the openmc docker images
sudo docker images

# Run the openmc images to create container named `openneomc`
sudo docker run -tid --shm-size=8G --gpus all --name openneomc -v /LocalWorkingDir/:/workspace/ 489368492/openneomc

# Execute the container
sudo docker exec -it openneomc /bin/bash

Note: in docker run step, the -v flag mounts the current working directory into the container, which is very convenient for users.

Please refer to Docker CLI for docker command-line descriptions.

Other commonly used commands

# Exit the container
exit

# Stop the container
sudo docker stop openneomc

# Start the container
sudo docker start openneomc

# Delete the container
sudo docker rm openneomc

# Delete the image(remove the container first)
sudo docker image rm 489368492/openneomc

Test OpenNeoMC

Let's test OpenNeoMC by the 'pin_cell_test.py' example, which can be found at /home

# cd /home
cd /home

# run 
python pin_cell_test.py

If you see the 'NEORL' logo and the log information of OpenMC, then congratulations!

The program runs around 3 minutes(may vary depending on your CPU), and the results are like:

------------------------ JAYA Summary --------------------------
Best fitness (y) found: 0.0015497217274231812
Best individual (x) found: [2.01355604]
--------------------------------------------------------------
---JAYA Results---
x: [2.01355604]
y: 0.0015497217274231812
JAYA History:
 [0.018311916874464318, 0.0017114252626817539, 0.0017114252626817539, 0.0017114252626817539, 0.0015497217274231812]
running time:
 155.2281835079193

Reference

OpenMC: https://docs.openmc.org/en/stable

OpenMC image: https://hub.docker.com/r/openmc/openmc

NEORL: https://neorl.readthedocs.io/en/latest/

OpenNeoMC image: https://hub.docker.com/r/489368492/openneomc

Contact

If you have any suggestions or issues, please feel free to contact Xubo Gu([email protected])

A socket script to obtain chinese phones-sequence for any english word

Foreign Pronunciation Generator (English-Chinese) We provide a simple socket script for acquiring Chinese pronunciation of English words (phones in ai

Ephemeroptera 5 Jul 25, 2022
Learn how modern web applications and microservice architecture work as you complete a creative assignment

Micro-service Создание микросервиса Цель работы Познакомиться с механизмом работы современных веб-приложений и микросервисной архитектуры в процессе в

Григорий Верховский 1 Dec 19, 2021
Desktop application for checking sites connection in a background mode

Site connectivity checker Desktop application for checking site connection in a background mode by sending ICMP messages. Problem and solution Usually

Karina Singatullina 26 Dec 19, 2022
AV Evasion, a Red Team Tool - Fiber, APC, PNG and UUID

AV Evasion, a Red Team Tool - Fiber, APC, PNG and UUID

9 Mar 07, 2022
PcapXray - A Network Forensics Tool - To visualize a Packet Capture offline as a Network Diagram

PcapXray - A Network Forensics Tool - To visualize a Packet Capture offline as a Network Diagram including device identification, highlight important communication and file extraction

Srinivas P G 1.4k Dec 28, 2022
EchoDNS - Analyze your DNS traffic super easy, shows all requested DNS traffic

EchoDNS - Analyze your DNS traffic super easy, shows all requested DNS traffic

Oli Zimmermann 1 Jan 11, 2022
A pure python implementation of multicast DNS service discovery

python-zeroconf Documentation. This is fork of pyzeroconf, Multicast DNS Service Discovery for Python, originally by Paul Scott-Murphy (https://github

Jakub Stasiak 483 Dec 29, 2022
Converts from PC formatted MAC addresses (hardware addresses) to Cisco format or vice-versa

MAC-Converter Converts from PC formatted MAC addresses (hardware addresses) to Cisco format or vice-versa Stores the results to a file in the same dir

Stew Alexander 0 Dec 24, 2022
Use Fast Redirect to easily redirect your domains.

Fast Redirect Use Fast Redirect to easily redirect your domains. Fast Redirects expects a JSON 'database'. This JSON 'database' contains the domains t

Cyberfusion 1 Dec 20, 2021
A non-custodial oracle and escrow system for the lightning network. Make LN contracts more expressive.

Hodl contracts A non-custodial oracle and escrow system for the lightning network. Make LN contracts more expressive. If you fire it up, be aware: (1)

31 Nov 30, 2022
A vpn that sits in your browser, accessible via a website

VPNInYourBrowser A vpn that sits in your browser, accessible via a website Example setup: https://VPNInBrowser.jaffa42.repl.co Setup Put the code onto

1 Jan 20, 2022
Building a Robust IOT device which is customizable, encrypted, secure and user friendly

Building a Robust IOT device which is customizable, encrypted, secure and user friendly, which uses a single GPIO pin to extract multiple sensor values

1 Jan 03, 2022
Query protocol and response

whois Query protocol and response _MᵃˢᵗᵉʳBᵘʳⁿᵗ_ _ ( ) _ ( )( ) _ | | ( ) | || |__ _ (_) ___ | | | | | || _ `\ /'_`\ | |/',__) |

MasterBurnt 4 Sep 05, 2021
A vpn that sits in your browser, accessible via a website

VPNInYourBrowser A vpn that sits in your browser, accessible via a website Example setup: https://VPNInBrowser.jaffa42.repl.co Setup Put the code onto

1 Jan 20, 2022
Tool for quickly gathering information from Shodan.io about the number of IPs which satisfy large number of different queries

TriOp Tool for quickly gathering information from Shodan.io about the number of IPs which satisfy large number of different queries For furt

Jan Kopriva 27 Nov 03, 2022
Home Assistant integration for MyEnergi devices

myenergi for Home Assistant myenergi custom component for Home Assistant This is a very early release, will add more documentations soon! This compone

Johan Isacsson 70 Dec 18, 2022
A Python3 discord trojan, utilizing discord webhooks for sending information.

Vape-Lite-RAT A Python3 discord trojan, utilizing discord webhooks for sending information. What you do with this code / project / idea is non of my b

NightTab 12 Oct 15, 2022
Enrich IP addresses with metadata and security IoC

Stratosphere IP enrich Get an IP address and enrich it with metadata and IoC You need API keys for VirusTotal and PassiveTotal (RiskIQ) How to use fro

Stratosphere IPS 10 Sep 25, 2022
A simple python application for generating a WiFi QR code for ease of connection

A simple python application for generating a WiFi QR code Initialize the class by providing QR code values WiFi_QR_Code(self, error_correction: int =

Ivan 2 Aug 01, 2022
IPE is a simple tool for analyzing IP addresses. With IPE you can find out the server region, city, country, longitude and latitude and much more in seconds.

IPE is a simple tool for analyzing IP addresses. With IPE you can find out the server region, city, country, longitude and latitude and much more in seconds.

Paul 0 Jun 11, 2022