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Neural Network Lab Develop a Neural Network to simulate the temperature exiting a heat exchanger: We will use a simulated heat exchanger in DeltaV, EX2_SIM
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Heat Exchanger We will configure the network to determine the tempered water exit temperature based in the inlet temperatures and flow rates
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Inputs Output, what we want to see from The Neural Network
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Heat Exchanger
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Heat Exchanger Calculations
The amount of heat transferred is based on the heat transfer coefficient, U and h
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Heat Exchange Calculations
Heat transfer coefficient non linear function depending on viscosity, thermo conductivity mass flow rate
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Inputs Select TT2-1, TT2-2, FC2-1 and FC2-2
Use a 1 second Historical Sampling Rate for this example
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Under Advanced Control
Lab Entry Block NNet Block under Advanced Control Tab
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Right click on NN block Select Extendable Parameters to change Number of inputs
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Select 4 inputs
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Select the sampling rate,
1 sec in our case
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Browse for input parameter, Any floating point
variable can be selected
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Select the CV or current value
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Enter the identifier to articulate the point
In the Neural Network toolkit
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Wire TT2-4 to the NN sample input
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NN block OUT_SCALE should match the
Range of the output
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Wire to NN_TEMP So we can trend the point
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Save the case and Download the network
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NN block reference inputs are available through the
Historian, but the Historian must be Enabled, Assigned to the Area and Node
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NN block reference inputs are available through the
Historian, but the Historian must be enabled, Assigned to the Area and Node, then Downloaded!
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DeltaV Neural Now that we have built the DeltaV Neural Network, we need to launch ( start up ) the application, either from the Control Studio or from the Explorer
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Right Click the block and select
Advanced Control > Neural
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Start > DeltaV >Advanced Control >Neural
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DeltaV Neural Block Reference Inputs and Sample
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Right click to set scale
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Green shaded area contains the
Training set, right click to select Red area for excluded area
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DeltaV Neural We need to configure the sample multiplier.
This entry should allow the Time to Steady State to be that which you estimate the process to get to steady state after a disturbance
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(1/50) * Time to Steady State
DeltaV Neural In DeltaV, each input is actually 50 sampled inputs delayed by (1/50) * Time to Steady State This way the model will sense not only the final value but the approach to steady state
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In our case, we estimate 5 minutes
to get to steady state, multiplier set to 6
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Note: You cannot have Control Studio running when training! Press Autogenerate to start the training process …
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Note the sensitivities and if
the network uses the input! We have to download the network to get it to work!
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You can delete other training results, but you cannot
delete the current running result.
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DeltaV Neural – Display Editing
We need to add a faceplate to the operators display. Open the display and do a quick edit. Locate the NN pre configured block and drag it on the display Browse to select the Neural Network
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Faceplate
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Training and test errors are shown
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Expert mode allows User to select data screening range
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Show inputs And delays, Click here Sensitivity and input selection Shown. Summ of all inputs = 1.0
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Delays are shown
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Detail, Can shift in expert mode
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Verification Selectors
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Bad points here
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Excluded Area
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