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Message added by Mayank Gupta,

P-Diagram or Parameter Diagram is a pictorial tool to represent the design of a system, sub-system or a component. It highlights the inputs, intended and unintended outputs, noise factors and control factors and is used extensively in product design.

 

An application-oriented question on the topic along with responses can be seen below. The best answer was provided by Santosh Mane on 5th Apr 2022.

 

Applause for all the respondents - Manokaran M, Johanan Collins, Manish Manjhi, Santosh Mane.

Featured Replies

Q 459. What is a P-Diagram (Parameter Diagram)? Elaborate its usage in new product development.

 

Note for website visitors - Two questions are asked every week on this platform. One on Tuesday and the other on Friday.

Solved by Santosh Mane

P Diagram:

P Diagram is a tool, used to frame or define the signal inputs and indented signal output along with the control factor and noise factor for the product/process.

P diagram consist of signal (process input), Control factors (design parameter), Noise factor (uncontrolled noise), Response (functional output to customers) and errors (unintended outcome).

P diagram for new product development:

In new product development, the input (S) (Customer needs) and output (R) parameters (functional and measureable requirements) are identified. Along with this, to meet the functional requirements, completely new design or modification in existing design can be identified. Parameters which will be controlled by the product designer called control factors (C) to be determined. Factors which cannot be controlled by the product designer called noise factor (N) to be identified.

Both control factor and noise factor will influence the product output. Where, the control factors can be controlled by product designer and the noise factor is uncontrolled by product designer.

The influence of noise will increase variation between input and output.

By maintain a proper interaction between control factor and noise factor will reduces the variation between input and output.

Parameter Diagram

In its simplicity, the Parameter Diagram can be considered a schematic representation of the signal, noise, control factors, and response variable. Juran defines Parameter Diagrams in his book on Quality, viz. Quality Planning and Analysis. He states that performance is one of the most basic features of any product and equates performance to the output of a product/service/system. For example, in a TV, it could be colour density, in an electric car it could be range, etc. The output is a factor of various engineering principles that are used to combine materials, components, parts, assemblies, etc. Each of these inputs has a range of parameters, which the design team needs to establish. Setting the correct value for each parameter would then produce the desired output.

The Parameter Diagram relates the inputs which may come from the system or customer to the desired output. The parameter diagram also takes into consideration external influences that are non-controllable.

The Parameter Diagram can be used as a visual tool for brainstorming and documenting various factors such as control factors, noise factors, input signals, error states, and ideal responses.

Use Cases of P-Diagram

-       It can be used as a very effective Brainstorming Tool.

-       It is helpful in the preparation of an FMEA, as each input could be analyzed for the failure modes and the effects can be analyzed and RPN Number calculated.

-       In complex systems where there is an interaction between numerous subsystems, design and engineering parameters, and operating conditions, the Parameter diagram helps the team to visually see each element.

-       It can also be used for Component FMEA when the visual representation of inputs, ideal response, noise factors, and control factors is helpful.

-       It can also be used in New Product Development, in combination with the Design of Experiments.

An Indicative Diagram of a Parameter Diagram is below:-

image.png.a11a8bab05aa7911751c9e9699bd1b13.png

Definitions of Elements of P Diagram

-       Input Signals. These are generally the energy sources required by the system. Variations in these inputs can cause a change in the output.

-       Control Factors. These are the parameters that the design team can control or change.

-       Error States. These are the loss of energy or undesirable output

-       Noise Factors. These are factors that influence the output but are not under the direct control of the design team. These include fair wear and tear of the equipment, normal degradation of materials, tiredness of operator, etc. A robust design protects the system against such noise factors.

-       Ideal Response. This is the desired functional output of the system.

Parameter Diagram, New Product Development, and Design of Experiments

DMADV. New Product Development generally follows the DMADV (Define, Measure, Analise, Design, Verify) methodology.  In the Define phase, the process and its design goals are defined. In the Measure phase, the CTQ is identified and measured. In the Analyse phase data is used to analyze the best possible design. In the Design Phase, the prototype is designed and finally, in the Verify phase, the outputs are verified in real conditions.

The DMADV methodology is used in New Product Development or when further improvement of the existing product is not a commercially or technologically viable solution. In the first case, no data would be available for analysis, and in the second case, the data from the previous product could possibly be used for analysis.

Design of Experiments. Experimental design is a critically important tool in scientific and engineering for improving the product realization process.  Critical components of these activities are new manufacturing process design and development, and process management. The application in DoE helps in increasing process yield, reduced variability, development time, and cost. Applications of DoE include

-       Evaluation and comparison of basic design configurations

-       Evaluation of material alternatives

-       Selection of design parameters so that the product will work under a wide variety of field conditions, that is so that the product is robust

-       Determination of key product design parameters that impact product performance

-       Formulation of New Products

Parameter Diagram.  After representing the system schematically in a Parameter Diagram, the Design of Experiments can be used with the input signals, control factors and error states, ideal response can be optimized based on the inputs.

References

https://www.weibull.com/hotwire/issue182/fmeacorner182.htm

https://kanbanize.com/lean-management/six-sigma/dmadv

Design and Analysis of Experiments, Eight Edition, Douglas C. Montgomery, Wiley

In Six Sigma, the process is measured in terms of defects; it aims to develop a process that delivers only 3.4 defects per million opportunities (DPMO). Processes are defined as a combination of inputs, actions, and outputs, or as a series of ongoing activities that transform inputs into outputs for the customer.

 

In Six Sigma strategy, Design for Six Sigma (DFSS) is about developing products that consistently do things right. In regular Six Sigma, DMAIC (Define- Measure- Analyze- Improve- Control) is used to improve a current process without changing the fundamental structure of the process. 

 

In a company, it is used when the existing product does not meet customer specifications or is not performing adequately. The DFSS method, on the other hand, is used to create optimized designs from the beginning of the process life cycle. Decisions made during the development stage have a significant impact on the final product performance, which is why DFSS has a close relationship with the product development process. 

 

As a result, the DFSS method shifts the focus from improving performance in the later phases of the design cycle (DMAIC) to the front-end phases.

 

Let me now describe the Taguchi method. The Taguchi method, also called Robust Design Method, was developed by Dr. Genichi Taguchi to improve productivity.

 

Product processes begin with inputs (such as user intent, energy, or other factors) and end with outputs that are functions delivered to the customer. This is the reason why the Taguchi method frequently uses a process diagram called the P-diagram to illustrate the process model for creating a product or manufacturing process.

 

It consciously takes into account "noise factors" such as environmental variations during product usage, manufacturing variations, and component deterioration.

 

Taguchi method also ensures customer satisfaction, improves the fundamental function of the product and thus, facilitates flexible designs and concurrent engineering. 

image.thumb.png.1405ae92708e20f56546108d3251a658.png 

 

P-diagram is a tool used to classify the variables associated with the product into inputs, noise factors, error states, design control parameters and output/ideal response. 

 

In defining the development scope, the input (energy, signal, user intent, etc.) and output (product characteristics, functions, performance) associated with the design concept are first identified. 

 

After which, consideration is given to the factors beyond the control of the designer; these are called the noise factors. Design parameters or control factors which are the parameters that can be specified by the designer are then determined. 

 

These control factors will influence the output and both can be adjusted and controlled. However, noise factors will also influence output and cannot be significantly controlled; this causes the relationship to deviate from the idea. 

Thus, it is important to select appropriate control factors (design parameters) that will reduce the deviation from idea to minimum; such is called robust design.

 

Let us see an example of implementing the CAPA process

image.png.0664b7470a66521457f66562a86d7f6a.png

  • Solution

P-Diagram is a tool that helps in developing a new product that has in-service robust performance. It considers the valid inputs from the customer (Product-KCs) based on products functionality. P-Diagram also takes into account the noise factors & control factors that may/will affect the product performance. Based on these inputs the Response (Output) of the system is analyzed. Errors states i.e. undesired response such as effect of external conditions, part-to-part variation, customer usage etc. are studied as well from the P-DiagramP-Diagram.thumb.jpg.a8f5490a04c94b54ada91e78da5e8c11.jpg.

 

P-Diagram's response(output) can be a valid input to FMEA. 

Santosh Mane has provided the best answer to this question. He has also provided an example to support his answer.

 

Answer from Johanan is a must read to get a holistic understanding of P-Diagram.

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