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Alternative Energy 2011
Posted On 05/09/2011 10:00 PM

ACTA Press is pleased to announce the publication of several new conference proceedings for the year 2011.

ACTA Press is also please to announce that they are launching 5 new journals: Parallel and Distributed Computing and Networks; Communication and Computer Security; Software Engineering; Communications; and Alternative Energy. Below, we have also included information about our latest journal publications.

http://www.actapress.com/proceedings.aspx?year=2011


JAPAN BEFORE AND AFTER EARTHQUAKE
Posted On 04/26/2011 10:28 PM

http://www.liberation.fr/seisme-japon-mars-2011-avant-apres.html


Renewable Energy in Iran
Posted On 12/05/2010 07:57 AM

www.irexpert.ir/Webforms/Forum/Question.aspx?QID=45789


Artificial intelligence systems in energy and renewable energy applications
Posted On 07/29/2010 05:03 PM

Artificial intelligence systems are widely accepted as a technology offering an alternative way to tackle complex and ill-defined problems. They can learn from examples, are fault tolerant in the sense that they are able to handle noisy and incomplete data, are able to deal with non-linear problems, and once trained can perform prediction and generalization at high speed.

Artificial intelligence systems have been used in diverse applications in control, robotics, pattern recognition, forecasting, medicine, power systems, manufacturing, optimization, signal processing, and social/psychological sciences. They are particularly useful in system modeling such as in implementing complex mappings and system identification. Artificial intelligence (AI) systems comprise areas like, expert systems, artificial neural networks, genetic algorithms, fuzzy logic and various hybrid systems, which combine two or more techniques.

Artificial intelligence techniques play an important role in modeling and prediction of the performance and control of energy and renewable energy processes. Results presented in various papers, are testimony to the potential of artificial intelligence as a design tool in many areas of energy and renewable energy engineering.

Artificial neural networks (ANNs) are collections of small individually interconnected processing units. Information is passed between these units along interconnections. An incoming connection has two values associated with it, an input value and a weight. The output of the unit is a function of the summed value. ANNs while implemented on computers are not programmed to perform specific tasks. Instead, they are trained with respect to data sets until they learn patterns used as inputs. Once they are trained, new patterns may be presented to them for prediction or classification. ANNs can automatically learn to recognize patterns in data from real systems or from physical models, computer programs, or other sources. They can handle many inputs and produce answers that are in a form suitable for designers.

Genetic algorithms are inspired by the way living organisms adapt to the harsh realities of life in a hostile world, i.e., by evolution and inheritance. The algorithm imitates in the process the evolution of population by selecting only fit individuals for reproduction. Therefore, a genetic algorithm is an optimum search technique based on the concepts of natural selection and survival of the fittest. It works with a fixed-size population of possible solutions of a problem, called individuals, which are evolving in time. A genetic algorithm utilizes three principal genetic operators: selection, crossover, and mutation.

Fuzzy logic is used mainly in control engineering. It is based on fuzzy logic reasoning which employs linguistic rules in the form of IF-THEN statements. Fuzzy logic and fuzzy control feature a relative simplification of a control methodology description. This allows the application of a “human language” to describe the problems and their fuzzy solutions. In many control applications, the model of the system is unknown or the input parameters are highly variable and unstable. In such cases, fuzzy controllers can be applied. These are more robust and cheaper than conventional PID controllers. It is also easier to understand and modify fuzzy controller rules, which not only use human operator’s strategy but, are expressed in natural linguistic terms.

Hybrid systems combine more than one of the technologies introduced above, either as part of an integrated method of problem solution, or to perform a particular task that is followed by a second technique, which performs some other task. For example, neuro-fuzzy controllers use neural networks and fuzzy logic for the same task, i.e., to control a process, whereas in another hybrid system a neural network may be used to derive some parameters and a genetic algorithm might be used subsequently to find an optimum solution to a problem.

For the modeling, prediction of performance and control of energy and renewable energy processes, analytic computer codes are often used. The algorithms employed are usually complicated involving the solution of complex differential equations. These programs usually require large computer power and need a considerable amount of time to give accurate predictions. Instead of complex rules and mathematical routines, artificial intelligence systems are able to learn the key information patterns within a multidimensional information domain. Data from energy and renewable energy processes being inherently noisy are good candidate problems to be handled with artificial intelligence systems.

Many of the energy and renewable energy problems are exactly the types of problems and issues for which artificial intelligence approach appear to be most applicable. In these models of computation, attempts are made to simulate the powerful cognitive and sensory functions of the human brain and to use this capability to represent and manipulate knowledge in the form of patterns. Based on these patterns neural networks for example model input-output functional relationships and can make predictions about other combinations of unseen inputs. Many of the artificial intelligence techniques have the potential for making better, quicker and more practical predictions than any of the traditional methods.

Artificial intelligence (AI) analysis is based on past history data of a system and is therefore likely to be better understood and appreciated by designers than other theoretical and empirical methods. AI may be used to provide innovative ways of solving design issues and will allow designers to get an almost instantaneous expert opinion on the effect of a proposed change in a design.

Cyprus University of Technology
Last updated on 18 September 2008

all of my project!
Posted On 06/26/2010 12:21 PM

I study the predictability of large events in self-organizing systems. I focus on a set of models which have been studied as analogs of earthquake faults and fault systems, and apply my methods based on 2 class pattern classification. In my methodology, first class contains seismics with magnitude smaller than Mthr and second class contains seismics with magnitude larger than Mthr. First I extract features of samples from foreshock zone for each class, and then reduce the dimensionality of extracted features. For classification of these samples based on their reduced features, I use MLP neural network. For forecasting purpose, trained MLP network must classify extracted foreshock features of future events. In this way my method could be used for forecasting of majority of magnitude of next events at exactly certain time (several months) before occurrence of that event, unfortunately the location of epicentres of events must known. As I know the PI method can be used for long-term forecasting of next earthquakes in PI map, so first I locate future earthquakes with PI method and then use my method for accurate forecasting of the time and locations of next earthquakes at PI-alarmed locations. I validated my method with ROC diagram of MLP classifier for testing samples. Results show that my method can be used for short-term forecasting of large earthquakes.


Phone call from the hell
Posted On 01/23/2010 12:08 PM
A British, an American and an Iranian died and all went to hell

The British said:
I miss England ;
I want to call England and see how everybody is doing there....
He called and talked for about 5 minutes...
Then he said: well, devil how much do I owe you for the phone call?

The devil goes five million dollars...

Five million dollars!!!

He made him a cheque and went to sit back on his chair....



The American was so jealous, he starts screaming, me too I want to call the United States , I want to see how everybody is doing
Too....

He called! And talked for about 10 minutes, and then he said: well, devil how much do I owe you! For the phone call?

The devil goes ten million dollars...

Ten million dollars!!!!! ! He made him a cheque and went to sit back on his Chair...

The Iranian was extremely jealous too...
He starts screaming and Screaming, I want to call  Iran too, I want to see how everybody is doing there too, I wanna talk
to everybody...

He called Iran and he talked for about twenty hours,
He was talking and talking and talking

Then he said: well, devil how much do I owe you for the phone call?

The devil goes:
One dollar...

ONLY ONE DOLLAR?!!!!! !!!!!!!!! !

The devil goes: yes, well...
From hell to hell,
it's local !!!!

SOC and earthquake prediction
Posted On 09/25/2009 12:06 PM

now I understand that earthquake is an example of SOC(self organized criticality) in nature... now I want to model earthquake with this Idea

I want to learn more about SOC and next to modeling SOC with neural network

and then use this model for earhquake...

can you help me more?


time series prediction
Posted On 09/16/2009 05:43 AM

i think we can analysis time series in two important acpects:

nonlinearity

nonstationarity

i want to introduce new method based on artificial neural network

1-model finding (i.e find the best structure for neural network)

--because of nonstationarity we need dynamic modelling

2-use EA or GA to learn the parameters of neural network

--for big search spaces we need methods that can search this big search space optimaly


here is iran
Posted On 06/27/2009 01:40 PM

Here is iran

I'm sacrifice of liberation

(just) I want you  too see my people

I can't see because of filtering (But you can!)

I'm persian But I can't see what happen in my country (But you can!)

I hate Khamenei

I hate Ahmadinezhad

I hate velayate faghih

I hate I hate I hate

 





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