Articles
Vol. 7 No. 3 (2020)
Generating Real Random Numbers with Uncertainty Principle
-
Submitted
-
February 6, 2024
-
Published
-
2024-02-06
Abstract
The real random number generation is a critical problem in computer science. The current generation methods are ei-ther too dangerous or too expensive, such as using decays of some radioactive elements. They are also hard to con-trol. By the declaration of uncertainty principles in quantum mechanics, real probabilistic events can be substituted by easier and safer processes, such as electron diffraction, photon diffraction and qubits. The key to solve the problem of Schrödinger’s cat is to identify that the atom stays in different states after and before the decay, and the result of the decay is probabilistic according to the wave packet collapse hypothesis. Same matter is able to possess different kinds of properties such as wave-particle duality due to that it can stay in various states, and which state will the matter stay is determined by the chosen set of physical quantities (or mechanical quantities). One eigenstate of a set of physical quantities can be a superposition of other eigenstates of different sets of physical quantities, and the col-lapse from a superposition to an eigenstate it contains is really random. Using this randomness, real random number can be generated more easily.
Downloads
Download data is not yet available.
-
Shengqian Li,
Xiaofan Zhang,
Research on Hand-eye Calibration Technology of Visual Service Robot Grasping Based on ROS
,
Instrumentation: Vol. 9 No. 1 (2022)
-
Zhen Zhang,
Bingquan Zhu,
Haifeng Chen,
Anti-interference Strategy of 20-Hi Cold Mill Automatic Gauge Control
,
Instrumentation: Vol. 9 No. 3 (2022)
-
Yutong Lu,
Ji Zhou,
Xia Kang,
Xianchang Zhu,
Junbo Liu,
Jian Wang,
Song Hu,
Low-order Wavefront Error Compensation for Multi-field of Lithography Projection Objective Based on Interior Point Method
,
Instrumentation: Vol. 9 No. 3 (2022)
-
LIU Peter X. ,
AGHDAM Afsoon Nejati ,
Important Issues of Needle Insertion into Soft Tissue
,
Instrumentation: Vol. 6 No. 2 (2019)
-
KHOSHNOUD Farbod,
QUADRELLI Marco B. ,
ESAT Ibrahim I.,
ROBINSON Dario ,
Quantum Cooperative Robotics and Autonomy
,
Instrumentation: Vol. 6 No. 3 (2019)
-
Anqi LI,
Dongxu YE,
SILVA Clarence W. DE ,
MENG Max Q.-H. ,
Convolutional Neural Network-based Leakage Detection of Crude Oil Transmission Pipes
,
Instrumentation: Vol. 6 No. 4 (2019)
-
Hua CHEN ,
Hao YANG,
Guanghui YANG ,
3D Product Display Based on Inventor Animation Design
,
Instrumentation: Vol. 7 No. 1 (2020)
-
Rongxin XING ,
Han WANG,
Yurong HU ,
Liang WEI ,
Xiaosong CHEN ,
Yongming WU ,
Envelop Tracking and Measurement
,
Instrumentation: Vol. 7 No. 1 (2020)
-
Zhiting Du,
Xianchun Zhou,
Mengnan Lü,
Yuze Chen,
Binxin Tang,
Multi-scale Attention Dilated Residual Image Denoising Network based on Skip Connection
,
Instrumentation: Vol. 11 No. 3 (2024)
<< < 1 2 3
You may also start an advanced similarity search for this article.