An Analysis of the Computational Complexity and Efficiency of Various Algorithms for Solving a Nonlinear Model of Radon Volumetric Activity with a Fractional Derivative of a Variable Order
Abstract
1. Introduction
1.1. Object of Research
1.2. Theoretical and Practical Significance of the Research
1.3. Subject of Research
1.4. Article Structure
2. Test Example
- —RVA in dimensionless form;
- —RVA, —maximum RVA value observed in the data; —RVA at the initial moment in time;
- —time of the process under consideration; and —initial and final moments in time;
- —a function, like the member it stands for, related to the output from the chamber into the surrounding atmosphere at a pressure difference between the internal (chamber) and atmospheric pressures, for example, when passing in the vicinity of a cyclone observation point;
- —the air exchange rate;
- —a function describing the diffusion mechanism of transport into the chamber [37];
- —a model member describing the delay associated with time non-locality in the process of transport through the geological environment.
3. Sequential Algorithms for Numerical Solutions
4. Average Execution Time Using Different Algorithms
- —the execution time of a test example of size N spent by sequential (EFDS, IFDS-MNM) algorithms;
- —the execution time of a test example of size N spent by parallel (EFDS-omp, IFDS-MNM-omp) algorithms based on the OpenMP API [44], on a machine with CPU threads;
- —RAM usage when executing a test example of size N using sequential (EFDS, IFDS-MNM) algorithms;
- —RAM usage when executing a test example of size N using parallel (EFDS-omp, IFDS-MNM-omp) algorithms;
- —RAM usage when executing a test example of size N using hybrid parallel (EFDS-hybrid, IFDS-MNM-hybrid) algorithms on a machine with CPU threads and a fixed number g;
- —similarly, the use of node GPU memory when executing a test example of size N using hybrid parallel (EFDS-hybrid, IFDS-MNM-hybrid) algorithms.
5. Complexity Estimates for Sequential Algorithms
- For the sequential EFDS algorithm, the asymptotically exact estimate of time complexity is of the order of ;
- For the sequential IFDS-MNM algorithm, the asymptotically exact estimate of time complexity is of the order of .
- For the sequential EFDS algorithm, the asymptotically exact estimate of memory complexity is of the order of ;
- For the sequential IFDS-MNM algorithm, the asymptotically exact estimate of memory complexity is of the order of .

6. Parallel Algorithms EFDS and IFDS-MNM
7. Analysis of Efficiency and Optimal CPU Usage for Parallel Algorithms
- is the acceleration in [unit] that the parallel version of the algorithm provides in comparison with the sequential one and is calculated as follows:where is the theoretical case, provided that there are no delays in parallelization for the task before it is sent to different CPU threads for calculation.
- is the efficiency, in [units/thr.], of using a given number of p CPU threads and is determined via the following ratio:where, for , we get that .
- is the cost in [sec. × thr.], which is determined by the product of a given number of p CPU threads and T execution time of the parallel algorithm. The cost is determined by the following ratio:
- is the cost-optimal indicator in [units. × thr.], is characterized by a cost proportional to the complexity of the most efficient sequential algorithm [49] and is calculated as follows:
8. Complexity Estimates for Parallel Algorithms
- For the parallel EFDS-omp and EFDS-hybrid algorithms, the asymptotically exact estimate of time complexity is of the order of ;
- For the parallel IFDS-MNM-omp and IFDS-MNM-hybrid algorithms, the asymptotically exact estimate of time complexity is close to the order of .

- For the parallel EFDS-omp and EFDS-hybrid algorithms, the asymptotically exact estimate of memory complexity is of the order of ;
- For the parallel IFDS-MNM-omp and IFDS-MNM-hybrid algorithms, the asymptotically exact estimate of memory complexity is close to the order of .
9. Application of the Discussed Algorithms in Solving Inverse Problems of RVA Dynamics
10. Conclusions
- The EFDS sequential algorithm has asymptotically exact complexity estimates in both T (time) and RAM (memory) of the order of ;
- The IFDS-MNM sequential algorithm has asymptotically exact complexity estimates in both T (time) and RAM (memory) of the order of ;
- The analysis efficiency and optimal CPU utilization showed that, for all the parallel algorithms considered, increasing the number of CPU threads beyond 16 does not provide a significant performance gain;
- It has been shown that the parallel algorithms EFDS-omp and -hybrid do not provide a significant increase in calculation speed (approximately ) compared to EFDS;
- At the same time, the parallel algorithms IFDS-MNM-omp and IFDS-MNM-hybrid provide a significant increase in computation speed by factors of 13 and 17, respectively, with RAM usage increasing by no more than 2.5 and 5 times, respectively, compared to the sequential IFDS-MNM;
- The parallel algorithms EFDS-omp and EFDS-hybrid have an asymptotically exact time complexity estimate of order , but according to the RAM model, the estimate is of order ;
- The parallel algorithms IFDS-MNM-omp and IFDS-MNM-hybrid have asymptotically exact complexity estimates in terms of T and RAM of order ;
- It can also be seen that, when solving a test example with a uniformly increasing input data size of N and an optimal number of CPU threads of 16, using -hybrid algorithms provides a significant advantage over -omp algorithms only when solving problems with 15,000, but with the total memory consumption of computing nodes, it is 4 times more. This is due to the fact that operations on vectors and matrices are carried out mainly on the GPU, which offers an advantage over the CPU when working with tensors of large dimensions;
- The application of the present parallel algorithms can accelerate calculations when solving inverse problems and when selecting an algorithm suitable for the problem.
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| RVA | Radon Volumetric Actuvity |
| CPU | Central Processing Unit |
| GPU | Graphic Processing Unit |
| EFDS | Explicit Finite-Difference Scheme |
| IFDS | Implicit Finite-Difference Scheme |
| MNM | Modified Newton’s Nethod |
| OpenMP | Open Multi-Processing |
| CUDA | Compute Unified Device Architecture |
| API | Application Programming Interface |
| PRAM | Parallel Random Access Machine |
| RAM | Random Access Memory |
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| N | 200 | 400 | 600 | 800 | 1000 | 1200 | 1400 | 1600 | 1800 | 2000 | 2200 | 2400 | 2600 | 2800 | 3000 |
| EFDS | 0.026 | 0.055 | 0.084 | 0.113 | 0.144 | 0.170 | 0.203 | 0.236 | 0.272 | 0.302 | 0.337 | 0.370 | 0.406 | 0.442 | 0.483 |
| IFDS-MNM | 0.074 | 0.212 | 0.448 | 0.823 | 1.374 | 2.044 | 3.028 | 4.418 | 5.882 | 7.843 | 9.994 | 13.10 | 16.61 | 20.97 | 25.75 |
| N | 200 | 400 | 600 | 800 | 1000 | 1200 | 1400 | 1600 | 1800 | 2000 | 2200 | 2400 | 2600 | 2800 | 3000 |
| EFDS | 0.006 | 0.012 | 0.018 | 0.024 | 0.030 | 0.036 | 0.042 | 0.048 | 0.054 | 0.061 | 0.067 | 0.073 | 0.079 | 0.085 | 0.091 |
| IFDS-MNM | 0.243 | 0.944 | 2.103 | 3.720 | 5.794 | 8.326 | 11.31 | 14.76 | 18.66 | 23.03 | 27.85 | 33.13 | 38.86 | 45.06 | 51.71 |
| p | EFDS -omp | EFDS -hybrid | IFDS-MNM -omp | IFDS-MNM -hybrid |
|---|---|---|---|---|
| 2 | 1.068 | 0.903 | 147.388 | 115.829 |
| 4 | 0.963 | 0.883 | 76.355 | 58.927 |
| 6 | 0.927 | 0.884 | 50.780 | 40.516 |
| 8 | 0.906 | 0.884 | 39.479 | 30.801 |
| 10 | 0.894 | 0.884 | 32.373 | 25.315 |
| 12 | 0.885 | 0.886 | 27.071 | 21.527 |
| 14 | 0.879 | 0.887 | 23.887 | 18.934 |
| 16 | 0.878 | 0.886 | 21.325 | 16.810 |
| 18 | 0.876 | 0.886 | 25.700 | 23.091 |
| 20 | 0.880 | 0.885 | 23.977 | 21.175 |
| 22 | 0.874 | 0.886 | 21.963 | 19.667 |
| 24 | 0.868 | 0.886 | 20.629 | 18.510 |
| 26 | 0.869 | 0.887 | 19.747 | 17.398 |
| 28 | 0.871 | 0.888 | 18.538 | 16.427 |
| 30 | 0.875 | 0.889 | 17.638 | 15.799 |
EFDS -omp | EFDS -hybrid | EFDS -hybrid | IFDS-MNM -omp | IFDS-MNM -hybrid | IFDS-MNM -hybrid | |
|---|---|---|---|---|---|---|
| RAM– alg. | 0.183 | 0 | 206.428 | 0 | ||
| RAM | 68.847 | 137.512 | 137.466 | 275.115 | 549.797 | 549.728 |
| N | EFDS -omp | EFDS -hybrid | IFDS-MNM -omp | IFDS-MNM -hybrid |
|---|---|---|---|---|
| 1000 | 0.138 | 0.140 | 0.377 | 0.337 |
| 2000 | 0.282 | 0.274 | 1.095 | 0.985 |
| 3000 | 0.420 | 0.414 | 2.735 | 2.388 |
| 4000 | 0.568 | 0.558 | 5.513 | 4.965 |
| 5000 | 0.721 | 0.728 | 11.455 | 10.288 |
| 6000 | 0.878 | 0.892 | 20.918 | 16.829 |
| 7000 | 1.042 | 1.050 | 33.812 | 28.511 |
| 8000 | 1.222 | 1.224 | 52.337 | 42.891 |
| 9000 | 1.392 | 1.394 | 74.270 | 63.681 |
| 10,000 | 1.559 | 1.569 | 103.685 | 85.078 |
| 11,000 | 1.743 | 1.752 | 143.353 | 126.858 |
| 12,000 | 1.939 | 1.944 | 193.125 | 159.268 |
| 13,000 | 2.124 | 2.145 | 264.476 | 225.509 |
| 14,000 | 2.327 | 2.320 | 365.500 | 275.562 |
| 15,000 | 2.507 | 2.516 | 465.145 | 391.044 |
| N | EFDS -omp | EFDS -hybrid | EFDS -hybrid | IFDS-MNM -omp | IFDS-MNM -hybrid | IFDS-MNM -hybrid |
|---|---|---|---|---|---|---|
| 1000 | 1.938 | 3.845 | 3.838 | 7.706 | 15.339 | 15.327 |
| 2000 | 7.690 | 15.320 | 15.305 | 30.670 | 61.195 | 61.172 |
| 3000 | 17.258 | 34.424 | 34.401 | 68.893 | 137.569 | 137.535 |
| 4000 | 30.640 | 61.157 | 61.127 | 122.375 | 244.461 | 244.415 |
| 5000 | 47.836 | 95.520 | 95.482 | 191.116 | 381.870 | 381.813 |
| 6000 | 68.848 | 137.512 | 137.466 | 275.116 | 549.797 | 549.728 |
| 7000 | 93.674 | 187.134 | 187.080 | 374.374 | 748.241 | 748.161 |
| 8000 | 122.314 | 244.385 | 244.324 | 488.892 | 977.203 | 977.112 |
| 9000 | 154.770 | 309.265 | 309.196 | 618.668 | 1236.683 | 1236.580 |
| 10,000 | 191.040 | 381.775 | 381.699 | 763.702 | 1526.680 | 1526.566 |
| 11,000 | 231.125 | 461.914 | 461.830 | 923.996 | 1847.195 | 1847.069 |
| 12,000 | 275.024 | 549.683 | 549.591 | 1099.548 | 2198.227 | 2198.090 |
| 13,000 | 322.739 | 645.081 | 644.981 | 1290.359 | 2579.777 | 2579.628 |
| 14,000 | 374.268 | 748.108 | 748.001 | 1496.429 | 2991.844 | 2991.684 |
| 15,000 | 429.611 | 858.765 | 858.650 | 1717.758 | 3434.429 | 3434.258 |
| Sequential, | -omp, | -hybrid, | |
|---|---|---|---|
| EFDS | 0.058 | 0.1 | 0.242 |
| IFDS-MNM | 1.515 | 0.662 | 0.893 |
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Tverdyi, D. An Analysis of the Computational Complexity and Efficiency of Various Algorithms for Solving a Nonlinear Model of Radon Volumetric Activity with a Fractional Derivative of a Variable Order. Computation 2025, 13, 252. https://doi.org/10.3390/computation13110252
Tverdyi D. An Analysis of the Computational Complexity and Efficiency of Various Algorithms for Solving a Nonlinear Model of Radon Volumetric Activity with a Fractional Derivative of a Variable Order. Computation. 2025; 13(11):252. https://doi.org/10.3390/computation13110252
Chicago/Turabian StyleTverdyi, Dmitrii. 2025. "An Analysis of the Computational Complexity and Efficiency of Various Algorithms for Solving a Nonlinear Model of Radon Volumetric Activity with a Fractional Derivative of a Variable Order" Computation 13, no. 11: 252. https://doi.org/10.3390/computation13110252
APA StyleTverdyi, D. (2025). An Analysis of the Computational Complexity and Efficiency of Various Algorithms for Solving a Nonlinear Model of Radon Volumetric Activity with a Fractional Derivative of a Variable Order. Computation, 13(11), 252. https://doi.org/10.3390/computation13110252

