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])

DNS monitoring system built with Python.

DNS monitoring system built with Python.

Andressa Cabistani 7 Sep 28, 2021
Python 3.3+'s ipaddress for older Python versions

ipaddress Python 3.3+'s ipaddress for Python 2.6, 2.7, 3.2. This repository tracks the latest version from cpython, e.g. ipaddress from cpython 3.8 as

Philipp Hagemeister 103 Nov 11, 2022
IP Pinger - This tool allows you to enter an IP and check if its currently connected to a host

IP Pinger - This tool allows you to enter an IP and check if its currently connected to a host

invasion 3 Feb 18, 2022
A pure-Python KSUID implementation

Svix - Webhooks as a service Svix-KSUID This library is inspired by Segment's KSUID implementation: https://github.com/segmentio/ksuid What is a ksuid

Svix 83 Dec 16, 2022
Anonymously Reverse shell over Tor Network using Hidden Services without portfortwarding

Anonymously Reverse shell over Tor Network using Hidden Services without portfortwarding Tor ağı ile Dark Web servislerini kullanarak anonim biçimde p

249 Dec 29, 2022
A tiny end-to-end latency testing tool implemented by UDP protocol in Python 📈 .

udp-latency A tiny end-to-end latency testing tool implemented by UDP protocol in Python 📈 . Features Compare with other existing latency testing too

Chuanyu Xue 5 Dec 02, 2022
FIRM-AFL is the first high-throughput greybox fuzzer for IoT firmware.

FIRM-AFL is the first high-throughput greybox fuzzer for IoT firmware. FIRM-AFL addresses two fundamental problems in IoT fuzzing

356 Dec 23, 2022
Ipscanner - A simple threaded IP-Scanner written in python3 that can monitor local IP's in your network

IPScanner 🔬 A simple threaded IP-Scanner written in python3 that can monitor lo

4 Dec 12, 2022
openPortScanner is a port scanner made with Python!

Port Scanner made with python • Installation • Usage • Commands Installation Run this to install: $ git clone https://github.com/Miguel-Galdin0/openPo

Miguel Galdino 7 Jan 09, 2022
A Python Packages to make own chat room

Chathon A Python packages for make own chat room Install PyPI pip install chathon

1 Dec 10, 2021
Py script to aid in setting up the boot chime in OpenCore.

BootChime Py script to aid in setting up the boot chime in OpenCore. It does so by helping you locate your IOHDACodecDevices, IOHDACodecAddress values

CorpNewt 7 Sep 19, 2022
It can be used both locally and remotely (indicating IP and port)

It can be used both locally and remotely (indicating IP and port). It automatically finds the offset to the Instruction Pointer stored in the stack.

DiegoAltF4 13 Dec 29, 2022
Simple app that redirect fixed URL to changing URL, configurable via POST requests

This is a basic URL redirection service. It stores associations between apps and redirection URLs, for apps with changing URLs. You can then use GET r

Maxime Weyl 2 Jan 28, 2022
NetMiaou is an crossplatform hacking tool that can do reverse shells, send files, create an http server or send and receive tcp packet

NetMiaou is an crossplatform hacking tool that can do reverse shells, send files, create an http server or send and receive tcp packet

TRIKKSS 5 Oct 05, 2022
Connects to databases or sftp server based on configured environmental variables.

Myconnections Connects to Oracle databases or sftp servers depending on configured environmental variables. VERY IMPORTANT: VPN must exist. Installati

0 Jan 02, 2022
A light-weight open-source project CLI utility for showing services running on ports in a host

Portable Port Scanner (ppscanner) Portable Port Scanner (ppscanner) is a light-weight open-source CLI utility that leverages on nmap to make quick and

1 Oct 30, 2021
ThorFI: A Novel Approach for Network Fault Injection as a Service

ThorFI: a Novel Approach for Network Fault Injection as a Service This repo includes ThorFI, a novel fault injection solution for virtual networks in

DESSERT research lab (Federico II University of Naples, Italy) 6 Dec 14, 2022
基于多线程快速端口扫描脚本,支持目标批量导入、结果导出。

JWS_portscan 基于多线程快速端口扫描脚本,支持目标批量导入、结果导出。如果扫描公网资产,为了提升扫描的精准性,建议放到服务器运行。 用法 依赖安装:pip3 install -r requriement.txt 支持参数:python3 JWS_portscan.py --help 脚本

jammny 5 Apr 12, 2022
A Python module that allows you to create and use simple sockets.

EasySockets A Python module that allows you to create and use simple sockets. Installation The easysockets module can be installed using pip. pip inst

Matthias Wijnsma 2 Jan 16, 2022
Easy to use gRPC-web client in python

pyease-grpc Easy to use gRPC-web client in python Tutorial This package provides a requests like interface to make calls to gRPC-Web servers.

Sudipto Chandra 4 Dec 03, 2022