The purpose of this paper is to present an application-specific optimization methodology for the design of coupled inductors used in multilevel interleaved power converters. This study focuses on minimizing core losses to meet power density requirements, reducing component volume to address cost constraints and maximizing longitudinal inductance to enhance electromagnetic interference (EMI) performance.
A multiobjective optimization (MOO) approach based on the NSGA-II algorithm is used to determine the Pareto-optimal design of the coupled inductor that satisfies the target power rating of 120 kW while minimizing volume for improved cost-effectiveness. The optimization incorporates key functional parameters, including main inductance, core losses and coil leakage inductance, the latter serving as an element for EMI filtering. To efficiently address the MOO problem, analytical models of the main inductance and core losses are integrated with a surrogate model of the device under test leakage inductance, derived from 2.5D finite element simulations.
Three Pareto-optimal designs are evaluated against a commercial reference in terms of core losses, inductance and cost. The low-loss design minimizes losses but requires a core twice as large as the reference, increasing cost by 60%. The compact design cuts material use by an order of magnitude but leads to substantially higher losses. The high-inductance design more than doubles inductance yet demands the largest core, raising cost by 70%. These results highlight a clear trade-off between magnetic efficiency, inductive performance and cost-effectiveness.
This study is limited by practical factors affecting manufacturability and performance. The proposed designs require complex multilayer windings that increase leakage inductance, parasitics and fabrication difficulty. Winding capacitance and thermal effects are not modeled, though both significantly impact high-frequency and high-loss operation. Assumed filling factors may not reflect real winding technologies, affecting packing density and losses. Moreover, the smallest-volume designs may demand extra cooling, reducing practical benefits. Future work should include detailed winding models, parasitic capacitance and coupled thermal–electromagnetic analysis to better capture real-world performance and reliability.
The proposed methodology provides a quantitative framework to support informed trade-off decisions between key functional parameters – such as loss efficiency, inductance and space utilization – while also addressing EMI-related aspects and ensuring economic competitiveness.
The novelty of this work lies in its integrated optimization workflow for coupled inductor design, which simultaneously accounts for key functional parameters – such as efficiency, inductance and space utilization – while incorporating EMI-related factors and cost considerations within a unified framework.
Introduction
The ongoing trend toward higher switching frequencies, increased functional integration and greater power densities has made it more challenging to achieve the necessary power ratings and electromagnetic compatibility (EMC) compliance in AC–DC power converters. Advancements into the sub-megahertz (MHz) switching frequency range and beyond (Mohammed and Jung, 2021) enable significant reductions in the size of inductive components, e.g. coupled inductors that use ferromagnetic materials (Rashid, 2024), thereby lowering costs and enhancing power density. However, higher operating frequencies lead to increased electromagnetic emissions within the conducted emission band (Paul, 2006), thus requiring additional filtering stages, such as common-mode chokes, to comply with regulatory limits. These additional components counteract the reductions in size and cost, creating an inherent trade-off between compactness and EMC performance. Addressing this trade-off is essential for developing competitive, high-performance power conversion solutions.
The literature presents a wide range of design approaches for inductive components in AC–DC power converters. In (Rashid, 2024) and (Cheng et al., 2022), analytical methods based on magnetic circuit theory are used to design inductive components, including the determination of core reluctance. Another methodology uses behavioral models derived from circuit simulations and fitted to transient measurement data, as shown in Oliveri et al. (2022). Finite element (FE) simulation-based approaches are reported in Abarzadeh et al. (2023) and Mirza et al. (2023), where the Ansys toolchain is applied to the design process. A comprehensive survey of modeling techniques with varying levels of complexity for magnetic components is provided in Górecki and Detka (2023). While these methods offer valuable insights, they primarily address functional parameters such as power ratings, saturation behavior and thermal performance. In contrast, this work considers essential functional aspects, as well as commercially relevant factors such as component volume and cost, to identify a set of feasible designs that balance performance with economic competitiveness.
The device under test (DUT) is a coupled inductor (CI), which is used in a multilevel interleaved power converter (Anderson et al., 2017) rated at 120 kW, with the converter topology shown in Figure 1. The CI uses a nanocrystalline toroidal core (Vacuumschmelze, 2025), and its geometric features are shown in Figure 2. The main inductance of each coil is denoted as , while represents the longitudinal inductance (Boillat and Kolar, 2012). As shown in Zhang et al. (2010), the longitudinal inductance is beneficial for electromagnetic interference (EMI) suppression when used in an EMI filter. This inductance can be realized either by a dedicated inductor or by exploiting the leakage inductance of the two coils. The latter approach offers a significant advantage by reducing the required volume, decreasing the amount of ferromagnetic material needed and lowering costs. Thus in this work, the CI is designed such that the necessary longitudinal inductance is achieved through coil leakage.
The circuit diagram shows a D C supply with V D C plus at the top and V D C minus at the bottom. Capacitors are connected across the supply with a ground reference. Four switching devices are arranged in two vertical legs with diodes across them. The midpoint of the legs connects to a coupled inductor labelled C I. The inductor connects to three output nodes labelled V one, V two, and V three. An additional schematic shows two inductors labelled L base connected in parallel and linked to another inductor labelled L long.Multilevel interleaved power converter
The circuit diagram shows a D C supply with V D C plus at the top and V D C minus at the bottom. Capacitors are connected across the supply with a ground reference. Four switching devices are arranged in two vertical legs with diodes across them. The midpoint of the legs connects to a coupled inductor labelled C I. The inductor connects to three output nodes labelled V one, V two, and V three. An additional schematic shows two inductors labelled L base connected in parallel and linked to another inductor labelled L long.Multilevel interleaved power converter
The three diagrams illustrate a toroidal inductor system. The first shows a circular core with multiple windings arranged around it and three leads extending downward. The second shows a cross-sectional view with concentric circular regions and labelled dimensions x zero, x one, x two, x three, x four, and x five, indicating geometric parameters. The third shows an equivalent circuit with two inductors labelled L base connected to terminals T one and T two carrying currents I one and I two. These combine into a single inductor labelled L long connected to terminal T three carrying current I one plus I two.(a) Investigated DUT and (b) cross sections (front-view and side-view) with the input parameters of the model. The parameters are the geometric features of the core while represent the number of turns, the thickness and the coverage of one coil. (c) equivalent circuit model of the DUT, where models the main inductance of a coil and is the longitudinal inductance (Boillat and Kolar, 2012)
The three diagrams illustrate a toroidal inductor system. The first shows a circular core with multiple windings arranged around it and three leads extending downward. The second shows a cross-sectional view with concentric circular regions and labelled dimensions x zero, x one, x two, x three, x four, and x five, indicating geometric parameters. The third shows an equivalent circuit with two inductors labelled L base connected to terminals T one and T two carrying currents I one and I two. These combine into a single inductor labelled L long connected to terminal T three carrying current I one plus I two.(a) Investigated DUT and (b) cross sections (front-view and side-view) with the input parameters of the model. The parameters are the geometric features of the core while represent the number of turns, the thickness and the coverage of one coil. (c) equivalent circuit model of the DUT, where models the main inductance of a coil and is the longitudinal inductance (Boillat and Kolar, 2012)
A multiobjective optimization (MOO) strategy is used to find a design of the CI that meets the required power ratings (here 120 kW) while minimizing volume for cost-effectiveness. This optimization strategy considers functional parameters, such as the main inductance and core losses, as well as the coil’s leakage inductances, to achieve the necessary for EMI filtering. To efficiently solve the MOO problem, analytical models of and core losses (Möreé and Leijon, 2024) are combined with a surrogate model of the longitudinal inductance developed from 2.5D FE simulations.
Modeling
The DUT is a toroidal-shaped coupled inductor, with its cross sections and input parameters shown in Figure 2. Assuming that the nanocrystalline core exhibits isotropic and linear magnetic behavior, and that the magnetic flux is uniformly confined within the core, the inductance , can be approximated using Ampere’s law as follows (Hurley et al., 2025):
where is the permeability of free space and is the relative permeability of the nanocrystalline core. The input parameters , , are the inner core radius, core width and core height (see Figure 2), while represents the number of turns of one coil.
The core losses are estimated based on Steinmetz’s equation (Möreé and Leijon, 2024) as follows:
where is the nominal core loss provided in the material datasheet (Vacuumschmelze, 2025) for a given frequency and magnetic flux density . The corresponding values of , and are summarized in Table 1. The parameter is the core volume, defined as:
Parameter values for estimating in (1), in (2) and B in (4)
| a | b | ||||
|---|---|---|---|---|---|
| [1] | [W/kg] | [kHz] | [T] | [1] | [1] |
| 4000 | 80 | 100 | 0.3 | 1.5 | 2.4 |
| | | | | a | b |
|---|---|---|---|---|---|
| [1] | [W/kg] | [kHz] | [T] | [1] | [1] |
| 4000 | 80 | 100 | 0.3 | 1.5 | 2.4 |
The given values are obtained from the datasheet (Vacuumschmelze, 2025) or directly from the manufacturer
The parameter f is the switching frequency and B is the magnitude of the magnetic flux density within the core defined as follows (Hurley et al., 2025):
where is the DUT’s transverse current defined as [see Figure 2(c)]. Figure 3(a) shows the transient switched node voltage connected between the terminals and of the DUT and the resulting current . Applying fundamental circuit theory (Hufschmied, 2020), can be obtained as follows:
where describes the transverse inductance of the DUT (assuming perfect coupling between the two coils) and T is the duration of the fundamental period of .
Finally, the Fast Fourier Transform of yields its spectral components, as shown in Figure 3(b). The Steinmetz equation in (2) assumes a sinusoidal excitation (Möreé and Leijon, 2024). However, Figure 3(b) illustrates that the excitation current exhibits a predominantly triangular waveform. Consequently, using the Steinmetz equation introduces an estimated error of approximately 10% (see Appendix). Because the primary focus of this paper is the optimization workflow rather than high-fidelity core-loss modeling, this level of accuracy is considered acceptable.
To determine the longitudinal inductance of the DUT [see Figure 2(c)], 2.5D magneto-static FE simulations have been carried out in CST Studio Suite (Dassault Systèmes, 2025). A simplified coil model has been used, considering a homogeneous source current density across the coil cross section, such that the magnetic flux generated by the coil is proportional to the number of turns (Dassault Systèmes, 2025). The prescribed current direction, along with the resulting magnetic flux density and magnetic energy density, is illustrated in Figure 4. As shown, the transverse magnetic flux generated by the two coils within the core material effectively cancels each other out [see Figure 4(c)], resulting in a negligible main inductance . Consequently, the longitudinal inductance can be determined as follows:
The left figure contains two time domain plots. The upper plot shows a square waveform of switching voltage V s w varying between positive and negative values over time in microseconds. The lower plot shows a triangular waveform of current I T increasing and decreasing linearly over the same time range. The right figure shows a frequency spectrum of current with amplitude in amperes versus frequency in kilohertz. A dominant peak appears at a low frequency, with smaller peaks at higher frequencies that gradually decrease in magnitude.(a) Switched voltage across DUT terminals and in Figure 2(c), operated at a switching frequency of 34 kHz, along with the corresponding transverse current through the DUT; and (b) spectral components of in (a)
The left figure contains two time domain plots. The upper plot shows a square waveform of switching voltage V s w varying between positive and negative values over time in microseconds. The lower plot shows a triangular waveform of current I T increasing and decreasing linearly over the same time range. The right figure shows a frequency spectrum of current with amplitude in amperes versus frequency in kilohertz. A dominant peak appears at a low frequency, with smaller peaks at higher frequencies that gradually decrease in magnitude.(a) Switched voltage across DUT terminals and in Figure 2(c), operated at a switching frequency of 34 kHz, along with the corresponding transverse current through the DUT; and (b) spectral components of in (a)
The three sub-figures illustrate a circular magnetic system. The first shows a cross-sectional geometry with inner and outer rings and patterned regions indicating winding directions. The second shows a field distribution map with a scale labelled T, representing magnetic flux density, with higher values concentrated in the outer ring region and lower values near side regions. The third shows an energy density distribution with a scale labelled joules per metre cubed, where higher values appear in the central region and lower values in the outer areas.(a) Current excitation of the 2.5D FE model; (b) simulated magnitude of the magnetic flux density using the current excitation in (a); and (c) simulated magnetic energy density using the current excitation shown in (a)
The three sub-figures illustrate a circular magnetic system. The first shows a cross-sectional geometry with inner and outer rings and patterned regions indicating winding directions. The second shows a field distribution map with a scale labelled T, representing magnetic flux density, with higher values concentrated in the outer ring region and lower values near side regions. The third shows an energy density distribution with a scale labelled joules per metre cubed, where higher values appear in the central region and lower values in the outer areas.(a) Current excitation of the 2.5D FE model; (b) simulated magnitude of the magnetic flux density using the current excitation in (a); and (c) simulated magnetic energy density using the current excitation shown in (a)
where is the magnetic energy density obtained from FE simulations [see Figure 4(d)]. The parameter describes the excitation current and it is defined as:
For simplicity has been chosen.
The 2.5D FE simulation model used in this paper requires approximately 2 s (using 16 CPU cores on a HPC cluster) to compute , hence its computational complexity is very low, if only single input parameter combinations are of interest. However, when the FE model for is combined with analytical models for and in the context of an MOO problem – where several thousand evaluations are typically required – using FE simulations becomes computationally impractical. To address this, a surrogate modeling approach is introduced in the following section to significantly reduce the computational cost of estimating , enabling the MOO problem to be solved within a feasible time frame.
Surrogate modeling
As already shown in Figure 2, the design space explored in this paper consists of input parameters , where describe various geometric features of the DUT, while represent the number of turns, the thickness and the coverage of one coil. To generate the training data set for the surrogate model, Latin Hypercube Sampling (LHS) was applied using input parameter combinations, uniformly distributed across the ranges specified in Table 2. The sample size is selected according to the taxonomy of surrogate modeling methods recommended in Forrester et al. (2008). In addition, 50 test samples were generated using LHS to test the model’s accuracy.
Bounds of design space
| [5, 149] mm | [6, 150] mm | [5, 30] mm | [2, 25] | [1, 10] mm |
| | | | | | |
|---|---|---|---|---|---|
| [5, 149] mm | [6, 150] mm | [5, 30] mm | [2, 25] | [1, 10] mm | |
A surrogate model is constructed using Gaussian Process Regression with an isotropic rational quadratic kernel defined as (Pedregosa et al., 2011):
where is the Euclidean distance between two points, l is a length-scale parameter and is a scale mixture parameter. The values of and are obtained using the L-BFGS-B optimization algorithm (Byrd et al., 1995) implemented in the Python SciPy library (Virtanen et al., 2020).
The obtained surrogate model achieves a mean-squared-error of only 0.04% for across 50 test samples, suggesting good agreement with the FE model, as shown in Figure 5. This level of accuracy is sufficient for the present study, because small estimation errors have a negligible effect on the intended behavior. In particular, because electromagnetic emissions are typically characterized on a logarithmic scale, and thus minor deviations do not significantly affect the overall predictive reliability of the model. Moreover, the surrogate model can estimate within milliseconds, reducing the computational cost by more than three orders of magnitude compared to the original FE simulations.
The scatter plot shows L long in microhenry on the vertical axis and sample number on the horizontal axis. Two data series are plotted as observation and surrogate. The points follow a similar increasing trend across samples. Values start near zero and rise steadily, reaching above 50 microhenries at higher sample numbers. The two series closely overlap with small deviations. The plot indicates a mean squared error of 0.04 per cent between observation and surrogate values.Comparison of FE model and surrogate model for all test samples
The scatter plot shows L long in microhenry on the vertical axis and sample number on the horizontal axis. Two data series are plotted as observation and surrogate. The points follow a similar increasing trend across samples. Values start near zero and rise steadily, reaching above 50 microhenries at higher sample numbers. The two series closely overlap with small deviations. The plot indicates a mean squared error of 0.04 per cent between observation and surrogate values.Comparison of FE model and surrogate model for all test samples
In the following section, this surrogate model for is combined with the analytical expressions for from (1) and from (2) to formulate a MOO problem.
Optimization results
The objective of the MOO problem presented in this paper is to identify coupled inductor designs that meet the required constraints on power and longitudinal inductance while minimizing total volume. Therefore, the MOO is solved for:
subject to:
using NSGA-II, implemented in the Python pymoo library (Blank and Deb, 2020). The constraints on and have been defined based on experience gained from previous preliminary prototypes. The constraint on was derived from system-level EMI simulations reported in Hussain et al. (2025). The geometric constraints on , and were arbitrarily selected to exclude designs that are difficult to manufacture and to prevent the design space from expanding to impractically large configurations. The constraint describes the maximal allowed current density within the coil and it is defined as:
where accounts for the coil’s fill factor. The parameter is the maximum load current through the coil, determined by the maximum power rating of the converter (here 120 kW 3-phase multilevel interleaved power converter, see Figure 1).
The resulting Pareto front, together with the corresponding input parameters and the convergence behavior, is shown in Figure 6. The Pareto front was obtained using a population size of 5,000 individuals over 100 generations, with a total optimization time of approximately 7 min. As illustrated in Figure 6(a), a wide range of designs satisfies the optimization problem defined in (9)–(17), clearly demonstrating the trade-offs between core losses, volume and longitudinal inductance. The volumes of the Pareto-optimal solutions span from 22 to 311 cm3, indicating significant potential for space reduction in practical applications. Core losses range from 0.25 to 5.3 W, highlighting opportunities to reduce losses and thereby relax cooling requirements. The longitudinal inductance varies from 10 to 31.2 µH, demonstrating the potential to enhance EMI filtering performance when required.
The image contains three subplots. In part a, a three-dimensional scatter plot shows relationships between core loss in watts, volume in cubic centimetres, and L long in microhenry, with points forming a trade-off surface. In part b, a curve of hypervolume versus generation rises rapidly and stabilises near 0.05, indicating convergence. In part c, a matrix of pairwise scatter plots and distributions displays relationships among variables x zero to x five, including clustered patterns and correlations, with diagonal plots showing individual parameter distributions.(a) Pareto front obtained from the surrogate-based optimization; (b) convergence behavior of MOO process using the hypervolume performance indicator available in Pedregosa et al. (2011).The total optimization time requires approximately 7 min using a population size of 5,000 individuals over 100 generations. (c) scatter matrix of the input parameter combinations corresponding to the Pareto-optimal solutions shown in (a)
The image contains three subplots. In part a, a three-dimensional scatter plot shows relationships between core loss in watts, volume in cubic centimetres, and L long in microhenry, with points forming a trade-off surface. In part b, a curve of hypervolume versus generation rises rapidly and stabilises near 0.05, indicating convergence. In part c, a matrix of pairwise scatter plots and distributions displays relationships among variables x zero to x five, including clustered patterns and correlations, with diagonal plots showing individual parameter distributions.(a) Pareto front obtained from the surrogate-based optimization; (b) convergence behavior of MOO process using the hypervolume performance indicator available in Pedregosa et al. (2011).The total optimization time requires approximately 7 min using a population size of 5,000 individuals over 100 generations. (c) scatter matrix of the input parameter combinations corresponding to the Pareto-optimal solutions shown in (a)
Figure 6(b) shows the convergence behavior of the MOO, evaluated using the hypervolume performance indicator (Pedregosa et al., 2011). The hypervolume is computed based on objective values normalized to the range [0,1], enabling a scale-independent assessment of convergence. An increasing hypervolume value over successive generations indicates progressive improvement in both convergence toward the Pareto front and diversity among the solutions.
Finally, Figure 6(c) summarizes the scatter matrix of the input parameter combinations corresponding to the Pareto-optimal solutions shown in (a). As illustrated, multiple feasible solutions exist for the parameters , , and , whereas only marginal variation is observed for and . The main diagonal of the scatter matrix displays the probability density functions of the individual design parameters , while the off-diagonal elements depict the joint variation between pairs of parameters, thereby revealing correlations and dependencies within the Pareto-optimal set.
Three Pareto-optimal solutions from Figure 6 are summarized in Table 3, along with their respective input parameters . These solutions highlight the balance between functional performance and cost efficiency. For comparison, Table 3 also includes a reference design manufactured by VAC (Vacuumschmelze, 2025) with a power rating of 120 kW, enabling a comparative assessment of core losses, volume, longitudinal inductance and cost.
Three distinct Pareto-optimal solutions are identified, representing trade-offs between minimal core losses, minimal volume and maximal longitudinal inductance
| Design parameter | Minimal core losses | Minimal volume | Maximal longitudinal inductance | Reference design |
|---|---|---|---|---|
| 0.25 W | 4.6 W | 0.32 W | 8 W | |
| 245 cm3 | 22 cm3 | 311 cm3 | 116 cm3 | |
| 12.1 µH | 10.1 µH | 31.2 µH | 13 µH | |
| 19.2 mm | 27.1 mm | 30 mm | 27 mm | |
| 39.9 mm | 10.2 mm | 39.8 mm | 20 mm | |
| 25 mm | 10.7 mm | 25 mm | 25 mm | |
| 24 | 24 | 24 | 20 | |
| 9.74 mm | 9.75 mm | 9.6 mm | 9 mm | |
| 178° | 115° | 104° | 160° | |
| Relative | ||||
| costs | 1.6 | 0.8 | 1.7 | 1 |
| Design parameter | Minimal core losses | Minimal volume | Maximal longitudinal inductance | Reference design |
|---|---|---|---|---|
| | 0.25 W | 4.6 W | 0.32 W | 8 W |
| | 245 cm3 | 22 cm3 | 311 cm3 | 116 cm3 |
| | 12.1 µH | 10.1 µH | 31.2 µH | 13 µH |
| | 19.2 mm | 27.1 mm | 30 mm | 27 mm |
| | 39.9 mm | 10.2 mm | 39.8 mm | 20 mm |
| | 25 mm | 10.7 mm | 25 mm | 25 mm |
| | 24 | 24 | 24 | 20 |
| | 9.74 mm | 9.75 mm | 9.6 mm | 9 mm |
| | 178° | 115° | 104° | 160° |
| Relative | ||||
| costs | 1.6 | 0.8 | 1.7 | 1 |
For comparison also the reference design is shown in the table. The relative cost information given in this table was provided by VAC (Vacuumschmelze, 2025)
Finally, Table 4 compares the longitudinal inductance predicted by the surrogate model with the values obtained from the FE model. The relative error remains below 3.4%, confirming the surrogate model’s accuracy. To illustrate the differences in size and volume among the three Pareto-optimal solutions in Table 3, their corresponding FE models are shown in Figure 7, scaled by a factor of 4.
Each design has a central circular opening, a thick dark ring, and segmented outer and inner light regions. The configurations differ in size, thickness, and placement of segmented arcs, indicating alternative geometric layouts of a magnetic core or winding structure.FE models corresponding to the three Pareto-optimal solutions for (a) minimal core losses, (b) minimal volume and (c) maximal longitudinal inductance and (d) FE model of the reference design
Each design has a central circular opening, a thick dark ring, and segmented outer and inner light regions. The configurations differ in size, thickness, and placement of segmented arcs, indicating alternative geometric layouts of a magnetic core or winding structure.FE models corresponding to the three Pareto-optimal solutions for (a) minimal core losses, (b) minimal volume and (c) maximal longitudinal inductance and (d) FE model of the reference design
Difference of between surrogate model and FE model for the three Pareto-optimal solutions shown in Table 3
| Design case | Surrogate model | FE model | Rel. error (%) |
|---|---|---|---|
| at minimal core losses | 12.1 µH | 11.7 µH | 3.4 |
| at minimal volume | 10.1 µH | 10.01 µH | 0.9 |
| at maximal longitudinal inductance | 31.2 µH | 30.25 µH | 3.1 |
| Design case | Surrogate model | Rel. error (%) | |
|---|---|---|---|
| | 12.1 µH | 11.7 µH | 3.4 |
| | 10.1 µH | 10.01 µH | 0.9 |
| | 31.2 µH | 30.25 µH | 3.1 |
Discussion
The design for minimal core losses () achieves the lowest loss, but at the expense of a large core volume (), approximately double that of the reference. The increased magnetic material reduces the core losses, yet drives up cost by 60% compared to the reference design. In contrast, the minimal-volume design () reduces the used material by an order of magnitude but results in substantially higher core losses (4.6 W). The maximal-inductance design yields the highest longitudinal inductance ( µH), more than twice compared to the reference design. Achieving this requires an even higher core volume (311 cm3), which again increases material cost by 70%.
The cost analysis highlights a clear trade-off: designs optimized for low losses or high longitudinal inductance demand greater material and manufacturing effort, while the compact configuration minimizes cost only by compromising magnetic efficiency and inductive capability. It is important to note that the core material was not included as a design variable in the optimization process, the relative permeability was therefore held constant. Future investigations may consider alternative core materials to further explore this design space.
In practice, the optimal solution is determined not only by application-specific constraints such as allowable temperature rise, geometric footprint and inductance requirements, but also by the manufacturability of the Pareto-optimal designs. Realizing the proposed configurations generally necessitates multiturn and multilayer winding arrangements, which are known to increase leakage inductance and reduce core utilization, thereby complicating the winding process and introducing additional parasitic effects. To ensure design reliability, a comprehensive winding model that accurately captures turn distribution and magnetic coupling effects is required. Moreover, winding capacitance has not been considered in this work. In high-frequency operation, this parasitic element can significantly influence resonant behavior and EMI characteristics. Similarly, the thermal behavior of the designs is not yet included; because higher core losses or compact configurations can result in elevated temperatures, future work should include detailed thermal–electromagnetic coupling to evaluate practical limits.
The choice of conductor type has also a significant influence on both manufacturability and electromagnetic performance. In this study, a defined filling factor is assumed to represent the effective packing density of the windings. In practice, however, different designs may use alternative winding technologies – such as round-wire windings (potentially connected in parallel), foil windings or shell-type configurations – each characterized by distinct filling factors. These variations directly affect achievable packing density, thermal dissipation and AC loss behavior. The volume footprint of the designs also remains a critical consideration for integration into constrained assemblies. While the minimal-volume solution achieves the smallest footprint, its higher losses may necessitate additional cooling or spacing, offsetting the initial size advantage. Consequently, the results presented provide a quantitative and practical basis for selecting a balanced design, while emphasizing the need to extend future optimization studies to include winding layout, parasitic capacitance and coupled thermal–electromagnetic behavior for a more comprehensive assessment of performance and reliability.
Conclusion
This paper has presented a multiobjective optimization framework for the design of a coupled inductor used in multilevel interleaved power converter, targeting minimization of core losses (power density constraints), volume (cost considerations) and maximization of longitudinal inductance (EMI performance). The approach combines analytical considerations with a surrogate model trained on 2.5D FE simulations, to significantly reducing the computational burden of the optimization process. The resulting Pareto-optimal designs were validated against FE simulations and demonstrated a relative error of less than 3.4%, thereby confirming the accuracy of the surrogate model. Overall, the proposed framework supports application-specific inductor optimization and can be readily extended to include manufacturability and cost models, thereby bridging performance-driven and economically constrained design objectives.
The authors would like to express their sincere gratitude to Vacuumschmelze for providing the material data for their nanocrystalline cores and for sharing their valuable expertise. This work has been jointly supported by Vacuumschmelze GmbH & Co. KG, Hanau, Germany, AVL List GmbH, Graz, Austira, CBMM Technology Suisse SA, Geneve Switzerland and by Silicon Austria Labs (SAL), owned by the Republic of Austria, the Styrian Business Promotion Agency (SFG), the federal state of Carinthia, the Upper Austrian Research (UAR), Industry and the Austrian Association for the Electric and Electronics (FEEI).
References
Appendix
Error of the Classical Steinmetz Equation for Triangular Excitation.
The classical Steinmetz equation (SE) expresses the specific core loss under sinusoidal flux excitation as Arruti et al. (2023):
where f is the excitation frequency, is the peak flux density and , and are empirical Steinmetz parameters obtained from sinusoidal loss measurements.
The improved generalized Steinmetz equation (iGSE) extends this model to arbitrary periodic waveforms with period TArruti et al. (2023):
where is the peak-to-peak flux swing and is an effective loss coefficient that is related to , and by enforcing that (19) and (20) coincide for a pure sinusoidal waveform. Let us consider a sinusoidal flux:
with peak-to-peak swing . Its time derivative is:
Substituting this into (20) yields:
With the change of variables , , we obtain:
where:
Thus:
Requiring consistency with the classical SEequation (19):
gives the relationship:
Next, we consider a symmetric triangular flux waveform with the same period T and peak value as the sinusoid. Over one period, ramps linearly from to in and back to in the remaining , so the magnitude of the slope is constant:
and the peak-to-peak swing is again . Inserting this into (20) yields:
Using , this simplifies to:
Substituting from (29) gives:
Therefore, the ratio between the iGSE prediction for triangular excitation and the SE prediction (which corresponds to sinusoidal calibration) is:
where as in (19). Note that the exponent cancels out in the ratio; the deviation depends only on .
For the parameters used in this work, and , the constant defined in (26) evaluates numerically to:
Inserting this into (37) yields:
Hence, for a symmetric triangular flux waveform with the same peak value and frequency f as the sinusoidal excitation used to identify the Steinmetz parameters, the classical SE overestimates the core loss by approximately:
This shows that, for and , the modeling error introduced by using the classical SE for symmetric triangular excitation is on the order of , with the SE providing a conservative (slightly pessimistic) estimate of the core loss.

