Markov Chain models serve two purposes firstly, subdivide the main data based on the mean value and one and two standard deviation plus and minus values around the mean value. The second stage of modeling, after calculating the transition probabilities between these categories from the available data, is completed by repeatedly multiplying the categorization date groups until the steady-state transition probability values are obtained. This procedure provides a convenient modeling approach for radon gas transient measurement records. After a brief presentation of Markov Chain procedure in this paper, the application is carried out by considering five categories that lead to a better transition probability matrix. Such a matrix provides info...
The main aim of this paper is to develop a markovienne model for the evaluation of seismic hazard in...
Uncertainties related with underground CO2 storage play a vital role in risk assessment with respect...
The purpose of this thesis is to develop a Markov Chain-based forecasting model that can accurately ...
Condition states of civil infrastructure such as pavements and bridges are usually indexed on discre...
In this short document, I will present how transitions between states of a nucleus can be represente...
Abstract: A large number of stochastic models are currently available for the earthquake occurrence....
Radon is a well-known radioactive inert gas that usually emanates from rock, soil, concrete and encl...
Markov transition models are frequently used to model dis-ease progression. The authors show how the...
A chronological review of the development of estimation procedures for unknown constant Markovian tr...
Steady state conditions have often been imposed on many Markovian systems. In analysing such systems...
Chronological uncertainty complicates attempts to use radiocarbon dates as proxies for processes suc...
Current radon risk assessments are based on radon gas measurements, which have long been suspected o...
Radon is one of the precursory phenomena that exist in connection to the occurrence of earthquakes a...
SIGLEAvailable from British Library Document Supply Centre-DSC:3292.8854(01-6) / BLDSC - British Lib...
The application of a radon model is useful to understand the processes that drive the radon gas beha...
The main aim of this paper is to develop a markovienne model for the evaluation of seismic hazard in...
Uncertainties related with underground CO2 storage play a vital role in risk assessment with respect...
The purpose of this thesis is to develop a Markov Chain-based forecasting model that can accurately ...
Condition states of civil infrastructure such as pavements and bridges are usually indexed on discre...
In this short document, I will present how transitions between states of a nucleus can be represente...
Abstract: A large number of stochastic models are currently available for the earthquake occurrence....
Radon is a well-known radioactive inert gas that usually emanates from rock, soil, concrete and encl...
Markov transition models are frequently used to model dis-ease progression. The authors show how the...
A chronological review of the development of estimation procedures for unknown constant Markovian tr...
Steady state conditions have often been imposed on many Markovian systems. In analysing such systems...
Chronological uncertainty complicates attempts to use radiocarbon dates as proxies for processes suc...
Current radon risk assessments are based on radon gas measurements, which have long been suspected o...
Radon is one of the precursory phenomena that exist in connection to the occurrence of earthquakes a...
SIGLEAvailable from British Library Document Supply Centre-DSC:3292.8854(01-6) / BLDSC - British Lib...
The application of a radon model is useful to understand the processes that drive the radon gas beha...
The main aim of this paper is to develop a markovienne model for the evaluation of seismic hazard in...
Uncertainties related with underground CO2 storage play a vital role in risk assessment with respect...
The purpose of this thesis is to develop a Markov Chain-based forecasting model that can accurately ...