Sustainable Application and Evaluation of the Novel Stingray Model in Non-Heritage Packaging: The Case of Clay Sculptures in Joon County
Abstract
:Featured Application
Abstract
1. Introduction
- To explore the applicability of the new Stingray model to the sustainable design process of packaging.
- Facilitating the integration of design methods and generative tools is essential.
- Conduct a feasibility assessment of the packaging.
2. Literature Review
2.1. Theoretical Framework
2.2. Conceptual Framework
3. Research Methodology
3.1. Sample Size
3.1.1. Sensory Vocabulary Collection
- Stratified sampling was used to collect perceptual vocabulary. Participants were stratified by gender (male and female), age group (e.g., 18–25 years old, 26–35 years old, 36 years old and above), and geographic region (e.g., urban versus rural) to reflect a wide range of user characteristics and reduce the impact of potential cultural differences on the results.
- The sample was selected considering the cultural background and consumption habits of different regions. By increasing the number of participants from each province, we ensured that we could represent the understanding and preferences of NCS in different regions, which in turn enhanced the external validity of the findings.
- In the process of participant selection, the study explicitly excluded non-target users (e.g., people who lack interest in products or relevant practitioners in professional fields) to obtain a more precise and perceptive vocabulary for the questionnaire. Before collecting information, the participants were provided with a brief background on products to ensure that they had a certain level of knowledge in their responses, which will help to enhance the credibility of the data.
3.1.2. Perceptual Vocabulary Extraction
3.2. Construction of the AHP Model
3.2.1. Hierarchical Modelling
3.2.2. Constructing Judgment Matrices
3.2.3. Hierarchical Single Ordering
- (1)
- Compute the product Mi of the elements of the judgement matrix:
- (2)
- Calculate the geometric mean W of each row Mi separately.
- (3)
- Normalization:
- (4)
- Calculate the largest characteristic root of the judgment matrix.
3.2.4. Consistency Check
- (1)
- Calculate the Consistency Index (CI):
- (2)
- Look up the corresponding Random Consistency Index (RI) from a table (Table 2).
- (3)
- Calculate the Consistency Ratio (CR):
3.2.5. Determination of Weights
- (1)
- Criterion-level judgment matrix and weight.
Intangible Cultural Heritage Packaging Design | Stylistic | Functional | Material | Color | wi |
---|---|---|---|---|---|
Stylistic | 1 | 2.449490 | 4.820571 | 8.050305 | 0.537995 |
Functional | 0.408228 | 1 | 3.722419 | 6.160141 | 0.301378 |
Material | 0.207429 | 0.268636 | 1 | 3.223710 | 0.112171 |
Color | 0.124234 | 0.162338 | 0.310178 | 1 | 0.048456 |
Consistency test | = 4.105810, = 0.035270 | ||||
When n = 4, the average random consistency index RI = 0.90 | |||||
= 0.039189 < 0.1, conformance check passed |
- (2)
- Indicator-level judgment matrix and weights
3.3. Generative Design
3.3.1. Establishment of API Virtual Search Engine
3.3.2. Using ChatGPT to Transform the Cue Words Further
3.3.3. Midjourney Generates Images
3.3.4. Overall Package Presentation
- (1)
- Use of straw materials
- (2)
- Design of drawer structure
3.4. TOPSIS Design Evaluation
Evaluation Indicators | Scenario 1 | Scenario 2 | Scenario 3 |
---|---|---|---|
Innovative | 5.4 | 5.2 | 3.2 |
Safe | 5.2 | 4.8 | 4.9 |
Sustainable | 5 | 4.9 | 4.2 |
Interesting | 5.3 | 4.8 | 4.1 |
Stable | 4.7 | 4.9 | 4.6 |
Practical | 4.6 | 4.1 | 4.4 |
Soft | 4.8 | 3.6 | 4.6 |
Personality | 5.2 | 4.8 | 3.4 |
4. Research Findings
- (1)
- Multi-method integrated modeling significantly improves design science and feasibility
- (2)
- Generative tools and the scientific method synergistically drive efficiency optimization
- (3)
- Enhanced Environmental Benefits from Sustainable Materials and Structural Innovations
- (4)
- Methodological Innovation to Promote the Improvement of Design Theory System
5. Conclusions
- Theoretical Contribution: The first non-heritage design framework based on the Stingray model, integrating perceptual engineering, AHP hierarchical analysis, and the TOPSIS method, is proposed, which makes the process of non-heritage packaging design more scientific and systematic and improves the transparency and effectiveness of the design decision-making.
- Methodological contribution: The Stingray design model was optimized to better adapt to the characteristics of generative tools, thus improving the efficiency and controllability of the design process. This new design path provides feasible methodological support for the modernization and transformation of nonheritage products.
- Practical Contribution: Evaluating the generative design results using quantitative methods, we verified the feasibility of generative tools working in synergy with the scientific method and promoted the green and sustainable development of packaging for non-heritage products.
- The applicability of the new Stingray model in the sustainable design process has been verified: The study found that the new Stingray model supports the entire process from conceptual design to practical application of intangible cultural heritage packaging by integrating multiple methods. It demonstrates strong systematicity and scientific rigor, particularly in the early stages of user perception exploration and the later stages of solution validation, indicating its good applicability and promotional value in the sustainable design of intangible cultural heritage product packaging.
- Promoting the integration of design methods and generative tools is crucial: This study emphasizes that deeply integrating design science methods and generative tools is a key path to improving design efficiency and quality. Sensory engineering and the AHP method jointly optimized the accuracy of input data, while AI tools efficiently produced creative solutions, achieving a closed-loop system from “cognitive acquisition” to “solution output”.
- Feasibility assessment is an indispensable part of intangible cultural heritage packaging design: Using the TOPSIS method to analyze the relative proximity of the three packaging schemes, this study confirms that the proposed scheme has significant advantages in terms of innovation, safety, sustainability, and fun. This emphasizes the necessity of incorporating a scientific assessment system into intangible cultural heritage packaging practices, which is conducive to the implementation and market promotion of design results.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AHP | Analytic Hierarchy Process |
ICH | Intangible Cultural Heritage |
GAN | Generative Adversarial Network |
NRM | Non-Heritage Resource Management |
NRL | Non-heritage Related Labeling |
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Scale | Definition | Meaning |
---|---|---|
1 | equally important | Indicates that both factors are of equal importance to the upper factor |
3 | slightly important | Indicates that element i is slightly more important than element j for the factor of the previous level |
5 | importance | Indicates that element i is more important than element j for upper-level factors |
7 | obvious importance | Indicates that element i is significantly more important than element j for factors of the upper level |
9 | very important | Indicates that element i is more important than element j for factors of the upper level |
2, 4, 6, 8 | median | Represents the middle value of two adjacent grades |
n | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 |
---|---|---|---|---|---|---|---|---|---|
RI | 0 | 0 | 0.58 | 0.90 | 1.12 | 1.24 | 1.32 | 1.41 | 1.45 |
Stylistic | Innovative | Straight | Stable | wi |
---|---|---|---|---|
Innovative | 1 | 9.654894 | 5.241483 | 0.768368 |
Straight | 0.103568 | 1 | 0.436776 | 0.074017 |
Stable | 0.190792 | 2.289428 | 1 | 0.157615 |
Consistency test | = 3.005232, = 0.002616 | |||
When n = 3, the average random consistency index RI = 0.58 | ||||
= 0.004510 < 0.1, conformance check passed |
Functional | Practical | Versatile | Safe | wi |
---|---|---|---|---|
Practical | 1 | 2.352158 | 0.334156 | 0.240195 |
Versatile | 0.425124 | 1 | 0.195530 | 0.113589 |
Safe | 2.992556 | 5.114623 | 1 | 0.646216 |
Consistency test | = 3.011348, = 0.005674 | |||
When n = 3, the average random consistency index RI = 0.58 | ||||
= 0.009783 < 0.1, conformance check passed |
Material | Sustainable | Lightweight | Soft | wi |
---|---|---|---|---|
Scheme 1. | 1 | 4.373448296 | 2.352158045 | 0.610087 |
Lightweight | 0.228652526 | 1 | 0.698799165 | 0.152220 |
Soft | 0.425150001 | 1.430940461 | 1 | 0.237693 |
Consistency test | = 3.007611, = 0.003805 | |||
When n = 3, the average random consistency index RI = 0.58 | ||||
= 0.006561 < 0.1, conformance check passed |
Color | Personalized | Cutting-Edge | Interesting | wi |
---|---|---|---|---|
Personalized | 1 | 2.550849001 | 0.334155847 | 0.243698 |
Cutting-edge | 0.392002819 | 1 | 0.185948311 | 0.107366 |
Interesting | 2.992555739 | 5.378268785 | 1 | 0.648936 |
Consistency test | = 3.013647, = 0.006824 | |||
When n = 3, the average random consistency index RI = 0.58 | ||||
= 0.011765 < 0.1, conformance check passed |
Norm | Combined Weights |
---|---|
Innovative | 0.4092 |
Safe | 0.1942 |
Stable | 0.0842 |
Practical | 0.0725 |
Sustainable | 0.0708 |
Straight | 0.0396 |
Versatile | 0.0343 |
Interesting | 0.0322 |
Soft | 0.0277 |
Lightweight | 0.0177 |
Personalized | 0.0122 |
Cutting-edge | 0.0054 |
Serial Number | Externally | Inside |
---|---|---|
Scenario 1 | ||
Scenario 2 | ||
Scenario 3 |
Program | Positive Ideal Solution Distance (Si+) | Negative Ideal Solution Distance (Si−) | Composite Score Index (Ci) | Arranged in Order |
---|---|---|---|---|
Scenario 1 | 0.2555659 | 0.93240128 | 0.78487125 | 1 |
Scenario 2 | 0.65203719 | 0.65891042 | 0.50262148 | 2 |
Scenario 3 | 0.84767522 | 0.36236428 | 0.29946484 | 3 |
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Song, Q.; Bai, Z. Sustainable Application and Evaluation of the Novel Stingray Model in Non-Heritage Packaging: The Case of Clay Sculptures in Joon County. Appl. Sci. 2025, 15, 6033. https://doi.org/10.3390/app15116033
Song Q, Bai Z. Sustainable Application and Evaluation of the Novel Stingray Model in Non-Heritage Packaging: The Case of Clay Sculptures in Joon County. Applied Sciences. 2025; 15(11):6033. https://doi.org/10.3390/app15116033
Chicago/Turabian StyleSong, Qichao, and Zhaoyi Bai. 2025. "Sustainable Application and Evaluation of the Novel Stingray Model in Non-Heritage Packaging: The Case of Clay Sculptures in Joon County" Applied Sciences 15, no. 11: 6033. https://doi.org/10.3390/app15116033
APA StyleSong, Q., & Bai, Z. (2025). Sustainable Application and Evaluation of the Novel Stingray Model in Non-Heritage Packaging: The Case of Clay Sculptures in Joon County. Applied Sciences, 15(11), 6033. https://doi.org/10.3390/app15116033