A π -Theorem-Based Advanced Scaling Methodology for Similarity Assessment of Marine Shafting Systems

: This paper introduces a rigorous and comprehensive approach to the assessment of marine shafting systems through the utilization of an advanced π -Theorem-based scaling methodology. Integrating journal-bearing similarity assessment and shaft-line scaling methodology with advanced dimensional analysis, the study aims to provide a methodology foundation for systematic replication and analysis of marine shafting systems through scaled models. The proposed scaling methodology ensures geometric and mechanical similarity in terms of shaft-line de ﬂ ection, considering key scaling parameters such as shaft length, diameter, weight, loads, rotational speed, material properties, bearing locations, and o ﬀ sets. The advanced dimensional analysis computes speci ﬁ c non-dimensional ratios to guarantee a close resemblance between a real-size system and a scaled lab model. The methodology is analytically derived and validated with numerical simulations for a case study, conducting comparative analysis, evaluating discrepancies, and utilizing the integrated framework for experimentation.


Introduction and Literature Trends
In marine engineering, understanding the complex static and dynamic phenomena in marine propulsion shafts is essential for ensuring the reliability and longevity of these critical components.However, the translation of experimental results from small-scale physical models to full-scale marine propulsion systems presents unique challenges.First, a literature review is performed to explore the application of dimensional analysis and the Buckingham π-Theorem (Pi-Theorem) [1,2] in achieving similarity between smallscale test rigs and full-scale marine propulsion shafts, extracting valuable insights for practical applications.
The study conducted by Korczewski and Marszałkowski [3] introduces a crucial aspect of diagnosing the fatigue of marine propulsion shafts by analyzing the energy aspects of fatigue.They proposed to adopt the high-cycle fatigue syndrome consisting of diagnostic symptoms determined from the function of the propulsion shaft action related to the transformation of mechanical energy into work and heat, and the generation of mechanical vibrations and elastic waves of acoustic emission [4].The authors emphasize that even the most sophisticated physical models developed in laboratory settings lack practical utility in diagnostics unless the research results can be properly transferred to the realworld scale.In response to this challenge, they propose a methodology that employs dimensional analysis and the Buckingham π-Theorem to identify dimensionless numbers representing dynamic similarity between physical models and full-scale marine propulsion shafts.These dimensionless numbers serve as a bridge, enabling the translation of research findings concerning energy processes associated with fatigue from physical models to actual marine propulsion systems.The preceding sections of the article by Korczewski and Marszałkowski [4,5] provide critical context for the importance of their research.They present the outcomes of both model and experimental studies focusing on the fatigue processes of propulsion shafts.To assess the diagnostic capabilities of the defined fatigue condition characteristics, the authors conduct a program of experimental tests.This program scrutinizes two statistical hypotheses: the significance of factors influencing the fatigue process [4] and the adequacy of a regression equation describing the fatigue life of propulsion shafts in terms of energy [5].Notably, these experiments are conducted on physical models, reflecting the operation of real full-size systems.However, a key limitation arises from the transition to a smaller scale, which may inadvertently omit certain phenomena and processes [6].
To overcome this limitation, dimensional analysis emerges as a powerful tool.It is widely recognized in engineering literature and has been successfully applied in various fields, including vehicle dynamics [7][8][9].Dimensional analysis serves as a means to determine the form of functions describing processes when only the relevant parameters are known.The fundamental premise is that the dimensions of these functions (physical quantities) must align with the dimensions of the power product created from the parameters that significantly influence each process.Within the framework of this study, the focus is directed on estimating the shaft deflection of a marine shafting system, which is a complex arrangement of interconnected shafts.The main objective is to derive dimensionless functions capable of interpreting shaft deflection, regardless of the system's size.
The authors of the present paper have addressed, in the past, several problems related to the performance assessment and design optimization of traditional marine shafting systems.More particularly several concerns have been addressed especially regarding the design of the stern-tube area and the need for a single or double-sloped aft stern-tube bearing (ASTB) [10].Furthermore, the assessment of existing designs has been analyzed in [11], raising some concerns regarding the underlying design optimization functions.In that particular case study of the shafting system of an 82,000 DWT bulk carrier, the initial alignment of the vessel was compared against the performance corresponding to different bearing offset combinations.Similar studies have been recently reported by other researchers especially focusing on the important effect of hull structural deformations in regard to shaft alignment [12][13][14].These studies collectively tackle various interconnected issues pertinent to marine shafting system operations, with a shared focal point: shaft deflection.
Despite the application of dimensional analysis in various engineering domains, currently trending mainly in the field of dimensional analysis associated with data modeling [15], there remains a noticeable lack of literature addressing the similarity of marine propulsion systems based on experimental tests conducted on a small scale.Similarly, past studies have focused mainly on (a) mathematical approaches [16], limited in steady-state shaft operation, and (b) fault diagnosis for rotor-bearing systems [17], which is not directly applicable to marine shafting systems.This work aims to address this research gap, highlighting the importance of conducting further research specifically focused on marine propulsion systems, where shaft deflection plays a critical role during operation.Finally, the proposed methodology seeks to identify and derive straightforward formulas or transfer functions that facilitate bridging the gap and transferring findings between small-scale test rigs and large-scale applications.

Small-Scale Model Development-Scope
Marine propulsion systems play an important role in the efficiency and performance of vessels.Achieving a comprehensive understanding of these systems is crucial for optimizing their design and operation.In this section the concept of similarity in marine propulsion systems is introduced, highlighting its significance and relevance in the field of marine engineering.Similarity in marine propulsion systems refers to the ability to replicate key characteristics or behaviors of full-scale systems in scaled-down laboratory models.This concept is fundamental for several reasons: Three levels of similarity are distinguished and assumed in different engineering applications, namely:

•
Geometric similarity: the ratio of all corresponding lengths in model and prototype are the same (i.e., they have the same shape), • Kinematic similarity: the ratio of all corresponding lengths and times (and hence the ratios of all corresponding velocities) in the model and prototype are the same, • Dynamic similarity: the ratio of all forces in the model and prototype are the same, e.g., Re = (inertial force)/(viscous force), is the same in both.
Geometric similarity is almost always assumed especially in practical applications where a smaller prototype is studied in a laboratory environment instead of the real-size model.To achieve similarity in marine propulsion systems and especially journal bearings, several critical parameters must be considered, according to the literature [5,[7][8][9], including: ➢ Reynolds Number: This dimensionless number characterizes the flow regime within the system.Maintaining a consistent Reynolds number between the model and fullscale system ensures similarity in flow behavior.➢ Froude Number: The Froude number relates to the dynamic similarity of the system, particularly used in terms of wave resistance and free surface effects.Matching Froude numbers is essential for replicating these phenomena accurately.➢ Geometric Scaling: Properly scaling the geometry of the model in relation to the fullscale system is crucial.This includes considerations of length, width, and height ratios.➢ Flow Rates and Velocities: Ensuring that model flow rates and velocities match those of the full-scale system is vital for achieving similarity in propulsion characteristics.➢ Material Properties: Materials used in the model (hull and propellers) should mimic the properties of their full-scale counterparts to accurately replicate performance.
In conclusion, similarity is a fundamental concept in marine engineering, enabling engineers and researchers to conduct meaningful experiments, predict performance, and develop efficient propulsion systems.By carefully matching key parameters and maintaining dimensional and dynamic similarity, marine engineers can leverage scaled-down models to gain insights that are applicable to the complex world of full-scale marine propulsion systems.
Creating a system scaling methodology to construct a small-scale shafting system closely mirroring the dimensions and characteristics of an actual large-scale asset, would respond to the prevailing trends in marine engineering, which underscore a growing concern regarding shafting system failures [18,19].These failures are frequently attributed to factors such as the ship's hull stiffness and the overall system rigidity, which can lead to excessive loading, particularly in the stern tube area.
At the same time, experimental evaluations and assessments conducted firstly at a reduced scale model often incur substantially smaller cost, compared to the direct development of a large-scale test rig.Furthermore, such scaled-down tests can often be highly customizable to fit different large-scale applications, rendering them even more cost-effective.Consequently, there is a preference for piloting at custom-made small-scale test rigs before testing in large-scale rigs.
Moreover, there exists a notable absence of a comprehensive methodology to establish a direct correlation between the model and the actual parameters of the system.Scaling the system solely based on length units does not provide a proper solution, as other intricacies tied to material properties, boundary conditions and forces/loads significantly influence system behavior.Consequently, the absence of a standard methodology to facilitate this conversion into a scaled-down test rig has been a challenge.
Hence, one of the primary priorities is the development of a rigorous and robust scaling methodology.This methodology is designed to support the scaling process both analytically and numerically, ensuring a comprehensive and accurate transition from largescale assets to small-scale test rigs.

Theoretical Background for Dimensional Analysis of Marine Shafting Systems
Many complex engineering-related problems defy straightforward mathematical solutions.In such instances, an analytical approach based on the dimensions of the involved quantities becomes invaluable.This approach, known as dimensional analysis, has a wide range of applications and benefits within the engineering domain [7][8][9].Here, the key uses and advantages of dimensional analysis are highlighted: ➔ Reducing Variables: Dimensional analysis serves as a powerful tool for reducing the multitude of variables, by distilling the essential dimensions.➔ Experiment Planning: Dimensional analysis can be employed to design experiments, ensuring that the selected variables align with the problem's key dimensions.➔ Engineering Model Design: Dimensional analysis aids in the design of simulation models for real-world phenomena and a more accurate data interpretation.➔ Parameter Prioritization: Dimensional analysis emphasizes the relative importance of parameters within a problem, which is crucial in understanding the dominant factors affecting a system.➔ Unit Conversion: A relatively common application of dimensional analysis is unit conversion.It facilitates the seamless transition of measurement units from one system to another, ensuring consistency and clarity in engineering calculations.
In essence, dimensional analysis encompasses any mathematical operation that incorporates units or dimensions.This versatile technique empowers engineers to tackle intricate problems, streamline their investigations, and achieve a deeper understanding of complex engineering systems.Dimensions of commonly derived mechanical quantities for dimensional analysis are given in Table 1.

Dimensional Analysis: Lubrication of Bearings
Journal bearings, where a shaft rotates within a bearing, are fundamental components in many mechanical systems.The behavior of such bearings can be understood and analyzed through the application of dimensional analysis, shedding light on the equilibrium between fluid viscous resistance and pressure differences within the system.
Equilibrium Factors: • Viscous Resistance: Viscous resistance occurs at the surfaces of both the rotating shaft and the bearing and is commonly quantified as friction force (F) or friction coefficient (μ).This resistance is a key factor in understanding the quantities related to the dynamics of the bearing (see Table 1).

•
Pressure Difference: The pressure difference arises from the transfer of force, typically carried by the shaft, which is then distributed as pressure within the lubricating fluid.This distribution plays a significant role in the functioning of the bearing.
In the context of dimensional analysis [7,8], a direct formulation is often employed.This entails describing an effect parameter, such as bias (ratio of bias distance to bearing diameter), friction drag (F), or fluid flux (Q), as a function of various cause parameters.These cause parameters encompass both geometric factors (Rbearing, Rshaft) and physical properties (viscosity η of the lubricating fluid, environmental pressure p0-particularly relevant in sealing bearings, load W, and relative velocity v or angular velocity ω).Conversely, inverse formulation considers bias (or other effect parameters), load W, sliding velocity v, fluid viscosity η, and environmental pressure p0 as given values.In this scenario, the geometric characteristics of the shaft and bearing must be determined.
In many cases, the inertia effects are negligible.The ratio of inertia force to viscous force, expressed as:

Re ⋅
⋅ ⋅ , which tends to be small, often on the order of < 0.001 However, in situations where the relative sliding velocity v or mean space h is significantly large, to the extent that the magnitude of this factor approaches 0.1 and inertia effects must be taken into account [7].
In the case of journal bearings, there are seven key parameters that should be considered, namely: R-radius, h-film thickness, η-lubricant viscosity, p0-pressure, W-load, vsliding velocity and Q-fluid flux.These seven parameters (R, h, η, p0, W, v, Q) are interrelated variables within the system, and their behavior can be described by: This equation encapsulates the relationships between these parameters, providing a foundation for the analysis and understanding of journal bearing lubrication.
Taking R, p0, and v as a unit produces 7 − 3 = 4 independent variables: where ηω/p0 represents ratio of viscous stress to environmental pressure, the second and third are dimensionless geometrical ratios, and the fourth represents the loading-to-environmental pressure ratio.Assuming a Rprototype/Rmodel = n, reduction ratio yields: If (ηv)m = (ηv)p, for a similarity of (ηv/(p0 R)), yields Summarizing, a generalized journal bearing similarity is formulated as in Table 2:

Dimensional Analysis: Deflection of Beams and Shafts
In a similar way, understanding the behavior of shafts (or beams) is paramount.These components play a vital role in transmitting power, supporting loads, and maintaining structural integrity in various applications.To gain insights, from a scaled model, into the intricate mechanics of shafts, engineers often turn to the concept of similarity.It involves examining how various factors, such as geometry, material properties, loads, and operating conditions, interact and influence the performance of shafts.Through similarity analysis, engineers can draw parallels between different shaft designs, allowing for a deeper comprehension of their mechanical responses.
In this exploration of similarity in shafts (or equivalent beam elements), the fundamental principles of dimensional analysis will be addressed, seeking to identify the key parameters and relationships that govern the behavior of these mechanical components.
Geometric similarity is not necessary for modeling some simple problems in solid mechanics, such as a problem related to simply supported elastic beam Figure 1.For distributed loading q(x) applied on the beam of unit length, deflection of the simply supported beam w = w(x) satisfies the following equation and boundary conditions: Equilibrium equation: E I q x , Boundary conditions: x 0, x l ∶ w 0. (5) In Equation ( 5), L = beam length, E = Young's modulus, and I = cross-section moment and EI = flexural rigidity of the beam with dimension FL 2 (F = MLT −2 = dimension of force).Distributed loading q(x) can be expressed by characteristic parameters such as characteristic loading qm and characteristic length Lq besides independent variable x.Deflection of the beam is a function of parameters introduced in Equation ( 5): w = f (x, L, E•I, qm Lq), (6) where This problem has two independent dimensions.Taking L and EI as a unit system (5 − 3 = 2 independent dimensions) produces: If the second and third terms are constants in the model and prototype, i.e.,

Π
and Π , then dimensionless distribution of deflection is the same for model and prototype: Modeling experiments do not require the geometry of the model to be similar to that of the prototype but does require the cross-section moment I to satisfy Equation (8).If the material of the beam in the model is the same as the material in the prototype, a squareshaped cross-section can simulate the I-shaped cross-section and a solid cross-section can be used to simulate a hollow one.
Unfortunately, the shafting system geometry for "traditional designs" of "large" merchant marine ships is quite more complex than a simply supported elastic beam, especially in the propeller shaft region, where a cantilever beam deflection would be a more accurate representation, since the main load applied to the propeller shaft edge is the propeller weight and the respective bending moment due to the propeller operation.
Equation ( 5) as well as the respective formulation for beam deflection on a cantilever beam address normal (bending) forces acting on the beams, utilizing standard, simplified formulations from beam mechanics.However, it is acknowledged that accounting for shear forces (such as torque or thrust in powertrain applications) would introduce shear deformations that should also be considered.In this initial exploration of a complex problem, the decision was made to employ these simplified equations.It is worth noting that this study focuses specifically on "Marine Shafting Systems", and its findings are not generalized to other fields with differing assumptions and complexities.Similarly to Equations ( 7)-( 9), the π-Theorem can be utilized to enable similarity in a cantilever beam, illustrated in Figure 2. In the study of the deflection of a cantilever beam, the parameters involved are the applied force (F), deflection (w), modulus of elasticity (E), beam radius (R), and the beam length (L).A total of 5 parameters (j = 5) is involved in this problem.The basic dimensions involved are summarized in Table 3, which demonstrates that 2 basic dimensions (k = 2) are involved in this problem.According to the Buckingham π-Theorem, the number of pi terms is 3 (j − k = 5 − 2 = 3).

Quantity
To find the form of the pi terms, the modulus of elasticity (E) and beam radius (R) are selected as the repeating parameters.Then the pi terms are then given by The exponents of the first pi terms are determined as follows: In order for Π1 to be dimensionless, Similarly, According to beam bending theory, the deflection of a circular beam is given by , thus, Π2 in Equation ( 13) can be rewritten as: Which is in agreement with the results obtained from dimensional analysis found also in literature for cantilever beam, but similarity cannot be ensured at a mixed type of beam including both a cantilever and a simply supported beam, since the similarity parameters in Equations ( 7)-( 9) are not the same as the ones demanded in Equations ( 12)- (14).Therefore, a supplementary phase is required, to couple this theoretical background with the complexity of the application for marine shafting systems.This essential measure is presented in Section 4.1: "Advanced Dimensional Analysis for a Scaled Shafting System Model".

Advanced Dimensional Analysis for a Scaled Shafting System Model
In this section, an in-depth exploration of the critical parameters integral to the assessment of similarity within the marine shafting system is addressed.These parameters encompass a wide array of factors that dictate the system's behavior, ensuring its accurate representation in scaled models. Geometric Parameters: Shaft length and Shaft diameter.A traditional marine shafting system, illustrated in Figure 3, assumes a complex structural configuration.It comprises a combination of simply supported beams at specific regions, notably the intermediate shaft and the crankshaft.Conversely, the aft end, housing the propeller shaft, assumes the form of a cantilever beam.This structural diversity necessitates careful assessment of similarity parameters to accurately replicate the system's scaled model.The starting point to implement and validate the scaling methodology includes the development of the Real Model of this system in full scale.Then scaling of the system may be implemented ensuring that the requirements set by Equations ( 7)-( 9) hold true: Then, the parameters of the scaled model may be calculated following the Model Parameter Ratios listed in Table 4.This would create the Scale Model (M), which looks quite similar, from a geometric perspective to the original Real Model (Figure 4).Then, the respective shaft alignment simulations in Real and Scale Model can be calculated and the shaft deflection (UY) in the Real Model is estimated in a reverse calculation (UYR = UYM×n 2/3 ) using the Scale Model shaft displacement data.These shaft deflection values demonstrate a significant discrepancy localized particularly in the aft area that can be visually illustrated, using the results from an example case, presented in Figure 5.The reason for this discrepancy in data is attributed to the complexity of the system and the fact that Equations ( 7)-( 9), for simply supported beam elements, should hold true at the same time as Equations ( 12)-( 14), for cantilever beams.A novel way to work around this problem is actually inherent within the parameters related to these equations and requires a different modeling approach.More particularly the present approach requires modeling at a fixed Modulus of Elasticity (E), with a predetermined fixed shaft diameter (D) scaling ratio (n) so: Dm = Dr/n, but the length of each beam is calculated on such a way to ensure that according to Equation ( 16) the ratio qmL 3 /EI = constant.Then, vertical displacements and Forces are calculated according to the respective "Model Parameter Ratios".This new type of model, illustrated in Figure 4, is the Equivalent scaled Model (Model), which is essentially affecting the length to diameter ratio of beams in the propeller shaft differently, in comparison to the ones in the intermediate and crankshaft.Furthermore, a sensitivity analysis is performed to demonstrate that the Average Error remains very small irrespective of any numerical errors and the shaft diameter ratio (n) in particular.The results of these simulations are included in Figure 5 and Table 5, where the reverse calculation of the large-scale (Real) shaft displacement is estimated utilizing data from a model that is n = 69 on n = 27.6 times smaller, respectively.

Dimensional Analysis for Journal Bearing Model
Journal bearings are essential components in mechanical systems, playing a critical role in ensuring smooth and reliable operations.Evaluating the performance of these bearings is important to guarantee mechanical system efficiency and longevity.Traditionally, the Sommerfeld number (S) has been employed as a metric to assess the performance similarity of different journal bearings.However, this approach has its limitations, prompting the exploration of more advanced techniques.

S
⋅ ⋅ ⋅ , (17) which is a dimensionless quantity used extensively in hydrodynamic lubrication analysis.The Sommerfeld number is very important in lubrication analysis because it contains both geometric and operational variables normally specified by the designer.
The most notable advantages of the Sommerfeld Number are: 1. Ease of Use: The Sommerfeld number is a straightforward, simple to use nondimensional parameter applicable to any conventional journal bearing.2. Comprehensive Assessment: It encompasses both design and operational aspects.However, the Sommerfeld number method, although a long-standing and widely utilized approach, has several important limitations, especially in non-traditional designs and operating conditions: 1. Simplified Bearing Geometries: The Sommerfeld number approach relies on simplified bearing geometries, which may not accurately represent the complexities of real-world bearings.2. Misalignment Influence: Investigations into journal bearings have revealed that misalignment, especially under heavy loads and significant misalignment angles, substantially affects both the static and dynamic characteristics of the bearings.Existing methods often fall short in assessing such scenarios.3. Elastic Deformation Influence: It does not account for any elastic deformation effects.4. Surface Detail Omission: Surface roughness or texturing data is not included.5. Uniform Load Assumption: It assumes a uniform distribution of radial load W. 6.Static Operating Condition: It is applicable mainly for "static" operating conditions.7. Inadequate Consideration of Operating Conditions: Traditional approaches struggle to account for various operating conditions and environmental factors that significantly impact bearing performance.8. Lubricant Assumption: It assumes that the clearance is always filled with lubricant, without considering oil starvation scenarios.
Dimensional analysis plays a pivotal role in understanding and addressing the challenges associated with journal bearing performance assessment.The primary objective of dimensional analysis in this context is to explore the characteristics of different bearing parameters under varying operating conditions.Furthermore, allows for a reduction in the number of independent variables involved in the assessment, simplifying the solution process and generalizing the results.In the pursuit of advanced dimensional analysis for journal bearing model evaluation, the present authors have also introduced AI techniques to overcome the limitations of traditional approaches.By considering misalignment and other real-world complexities, these techniques offer a more comprehensive assessment of performance similarity, ultimately contributing to the reliability and efficiency of mechanical systems [20].
To ensure bearing similarity, the Sommerfeld Number was eventually utilized, ensuring that the bearings will operate, in the model scale, at a Sommerfeld Number similar to the prototype.An example of bearing scaling is illustrated in Table 6.In this example a set of ASTB and FSTB from a conventional Bulk Carrier were selected and all the geometric constraints of the small-scale bearings (scale ratio: n = 18) were fixed.Additionally, the following constraints were considered for the small-scale bearings, namely DShaft Nominal = 25 mm, η = 0.07 Pa s, and the shaft (motor) will rotate at 1440 RPM, thus the load P becomes the key parameter that will ensure Sommerfeld Number similarity.

Coupled Dimensional Analysis towards a Similar Small-Scale Model
This section addresses the integration of the two fundamental methodologies already discussed: (a) the Journal Bearing Similarity and (b) the "Scaling Methodology" using "Advanced Dimensional Analysis" in marine shafting systems.This integration aims to create a unified framework for accurately replicating and analyzing marine shafting systems in scaled models.
The "Scaling Methodology", as described in earlier sections, is primarily concerned with achieving geometric and mechanical similarity between a real marine shafting system and its scaled-down model.This methodology involves the identification of key parameters, such as shaft length, diameter, weight, external loads, rotational speed, material properties, bearing locations, and vertical offsets.By ensuring that specific scaling ratios and equations are met, the scaled model closely resembles the real system, thus allowing for meaningful experimentation and data extraction.
On the other hand, "Advanced Dimensional Analysis", as discussed in previous sections, serves as a tool for understanding the behavior of marine shafting systems.It involves the computation of dimensionless parameters that capture the influence of different factors on system performance.This analysis leads to the reduction of independent variables, simplification of solutions, and generalization of results.
These methodologies are merged following the flowchart illustrated in Figure 6.This step-by-step approach includes the following key elements: 1. Establish Real Model (R): Begin by developing a full-scale real model of the marine shafting system, following the Scaling Methodology.This real model serves as the reference for the scaled-down model.2. Determine Scaling Parameters: Apply the Scaling Methodology to determine the appropriate scaling parameters and ratios.3. Dimensional Analysis: Apply Advanced Dimensional Analysis Methodology to compute the dimensionless parameters that capture the system's behavior under various operating conditions.These include geometric dimensions, material properties, loadings, and rotational speeds.This step allows for a deeper understanding of how different factors affect performance.Ensure that Equations ( 7)-( 9) and ( 12)-( 14) are satisfied to achieve similarity between the real and scaled models.4. Create Equivalent Scaled Model (M): Using the scaling parameters obtained in the previous step, construct a scaled-down model that closely mimics the real model.This model is designed to adhere to the geometric and mechanical constraints dictated by the Scaling Methodology.5. Comparative Analysis: Conduct a comparative analysis (Shaft Alignment simulations) between the real and scaled models.Examine the performance of the scaled model under various conditions and compare it to the real system.This step ensures that the scaled model accurately represents the behavior of the full-scale system.6. Error Assessment: Evaluate any discrepancies between the real and scaled models and assess the accuracy of the Equivalent Scaled Model.7. Validation and Experimentation: Utilize the integrated framework for experimentation and validation.Perform laboratory tests and data collection using the scaled model to gain insights into the behavior of the full-scale shafting system.
The integration of the "Scaling Methodology" and "Advanced Dimensional Analysis" provides a robust and comprehensive approach to replicate, analyze, and assess marine shafting systems in scaled models.By merging these methodologies, researchers and marine engineers can bridge the gap between theory and practical experimentation, ultimately enhancing the reliability and efficiency of mechanical systems in marine applications.This integrated framework empowers the exploration of complex real-world scenarios and fosters innovation in the field of marine engineering.

Model Development for Small-Scale Experimental Test-Rig
This section presents an integrated approach that combines two key methodologies: "Journal Bearing Similarity and Scaling Methodology" with "Advanced Dimensional Analysis in Marine Shafting Systems".The goal is to perform a characteristic Case Study to assess the unified framework for replicating and analyzing marine shafting systems using scaled models.
The Scaling Methodology focuses on achieving geometric and mechanical similarity between real marine shafting systems and scaled-down models.This involves identifying key parameters like shaft length, diameter, weight, loads, rotational speed, material properties, bearing locations, and offsets.Specific scaling ratios ensure that the scaled model closely resembles the real system, enabling meaningful experimentation.
Advanced Dimensional Analysis is employed to understand system behavior under different conditions by computing dimensionless parameters.This simplifies solutions and generalizes results.The proposed approach consists of several steps illustrated in Figure 6 and thoroughly detailed in Section 4.3.

Preliminary Numerical Investigation-Available Bulk Carriers
Based on the available data collection records, a roster of 22 Bulk Carrier ships was accessible.These vessels vary in size, primarily determined by their Deadweight capacity (DWT).Out of these, 17 Bulk Carriers, possessing the most extensive data records, were subjected to comprehensive comparative analysis to evaluate the characteristics of their respective shaft arrangements.
The ensuing Figure 7 illustrates the ratios of Propeller shaft length (depicted in blue), Intermediate shaft length (in red), and Crankshaft length (in green) relative to the total shaft length.This visual comparison distinctly reveals that these ratios remain relatively consistent, regardless of the ship's DWT, hovering around the values of approximately 0.37, 0.37, and 0.26, respectively.To provide a more detailed perspective, Table 7 compiles the average values and standard deviations for various noteworthy ratios identified during the analysis of shaft arrangements.Subsequent to this comprehensive analysis, a crucial parameter, namely the qmL 3 /EI ratio, also referred to as the shaft's equivalent "beam toughness" ratio was examined.The analysis, illustrated in Figure 8, involves a comparison of this parameter across the shaft lines of ships with varying DWT.The objective is to discern how this ratio aligns with different ship sizes and assorted shaft arrangement configurations.The results revealed that this pivotal ratio exhibits a relatively small standard deviation in the crankshaft section and slightly higher variability in the propeller shaft.However, notably, it displays significantly greater variation in the intermediate shaft segment.This observation underscores that the intermediate shaft part of the shaft arrangement tends to exhibit more substantial variations across different ship sizes and configurations.
To provide a more detailed perspective, Table 8 compiles the average values and standard deviations for this noteworthy ratio, for the Propeller, Intermediate, and Crankshaft, identified during the analysis of the various shaft arrangements.With these parameters in mind, a specific characteristic vessel, namely vessel "Bulk Carrier S" has been selected as the exemplar for the application and evaluation of the developed methodology in the ensuing case study.

Dimensional Analysis-"Bulk Carrier S"
This section addresses the dimensional analysis conducted on the case study vessel, "Bulk Carrier S." This methodology can be broken down into two distinct components: the equivalent shaft modeling and the small-scale journal bearing modeling.Similarity is achieved through the rigorous application of dimensional analysis and the utilization of dimensionless parameters.These analytical tools enable the seamless acquisition of knowledge and insights derived from data collected during experiments conducted on the small-scale model within the test rig.This Case Study is a numerical example that includes the critical parameters crucial for assessing model-prototype similarity within marine shafting systems.These parameters, previously presented in Section 4.1, encompass various factors that influence the system's behavior such as Geometric Parameters, Load-Related Parameters, Material Properties, and Support Configuration Parameters.
Marine shafting systems exhibit complex structural configurations, requiring careful consideration of the similarity parameters relevant for scaled replication.For accurate shaft-line modeling, several useful parameters can be extracted from the ship's shaft arrangement plan and other related drawings.These parameters are essential for accurately replicating the shaft arrangement in both actual and scaled models.Some of the key parameters include: ➔ Shaft length: The total length of the indivitual shafts, including the propeller shaft, intermediate shaft, and crankshaft.➔ Shaft diameters: The varying diameters of the individual shaft sections, namely the propeller shaft, intermediate shaft, and crankshaft.➔ Bearing types and position: The types and position of the bearings used along the shafline define the support type and location, respectively.➔ Bearing dimensions: Including all relevant sizes and aspect ratios.➔ Shaft material properties: The material composition of the shaft, including its modulus of elasticity.➔ Shaft weights: The weights of the different shaft sections are accounted for.➔ Shaft rotational speed: Shaft RPM is important for journal bearing performance.➔ Vertical offsets: The vertical offsets of each bearing define the shaft alignment.➔ Propeller loads: These details, include the propeller's diameter, load, bending moment and eccentric trust, and determine a key external load on the system.➔ Main engine loads: The magnitudes and positions of these loads define most of the external loads applied on the propulsion system.These parameters collectively provide the necessary data for creating an equivalent shaft-line model that closely mimics the real ship's shaft arrangement.This modeling is essential for understanding and assessing the behavior of the system, in terms of the shaft deflections, under different operating conditions.
Having completed an accurate model of the real large-scale asset, it is possible to develop smaller scale models, included in table S1, with dimensional similarity, this can be conducted ensuring the derived requirements are met.This results in an Equivalent Scaled Model (M) resembling the Real Model geometrically according to Figure 9.The dimensional analysis is formulated according to Equations ( 7)-( 9), ( 12)-( 14) and ( 16) as: f , , , where and , then: f ≡ f .
( A novel approach is implemented, involving a fixed Modulus of Elasticity (E) and a predetermined fixed shaft diameter (D) at a scaling ratio (n), then ensuring that qm•L 3 /E•I = constant, the Length of each equivalent beam element is calculated.This leads to the creation of the Equivalent Scaled Model (Model), affecting the length-to-diameter ratio of beams differently in various shaft sections.Shaft alignment simulations are performed to validate the bearing reaction forces and calculate influence factors, utilizing the "Shaft Alignment Tool" an in-house software that had been developed in the department of Marine Engineering of School of Naval Architecture and Marine Engineering of National Technical University of Athens (NTUA).The "Shaft Alignment Tool" is a beam element solver that enables modeling of the shafting system as a series of Euler beam elements [10,11] and was used to assess both the Real and the Scaled Models, with shaft deflection (UY) estimated both in the Real Model and reverse engineered using the Scale Model data and the Equivalent Scale Model.Discrepancies are observed between the predictions from the simple Scale Model, especially in the aft shaft area, due to the complexity of the system and conflicts in terms of similarity for different beam types (simply supported and cantilever beams).
Figure 10 illustrates an application of this scaling methodology, comparing the error in reverse prediction of the Prototype (Real) shaft deflections (UYR) using the Scaled Model (M) and the Equivalent Model (Model), respectively.The details of the beam elements models and the respective calculations for each of the models is included in Appendix A. These results showcase the effectiveness of the proposed method to produce an accurate Equivalent Scaled Model, at which one can perform lab experiments and extract important data that can transfer knowledge directly to the actual large-scale application.
Numerical comparisons between the basic Scaled Model and the Equivalent Model are conducted to assess their predictive accuracy for actual shaft deflections in the Real Model.The outcomes are visually depicted in Figure 10, and the essential findings are summarized in Table 9, considering both the average error and the standard deviation of the error.Observing Figure 10, it becomes apparent that the Uy(m) (blue) curve closely resembles the Uy-reverse Model (green) curve, highlighting the effectiveness of the proposed methodology.This alignment essentially signifies that following the methodology outlined in Section 3, it is feasible to derive the shaft deflections of the large-scale application with considerable accuracy, utilizing data obtained from the small-scale model or facility.Based on the outcomes of the numerical analysis, the construction of the shaft model for the test rig aligns with the principles of the Equivalent Scaled Model.Specifically, the shaft line from the flywheel (just before the aftmost ME bearing) is the focus, simplifying the modeling process by excluding the complex crankshaft area.This decision is rooted in the fact that replicating the crankshaft area on a laboratory scale becomes impractical, particularly due to the use of a different motor (usually some induction motor) compared to the two-stroke main engine employed in the real application.

Scaled Journal Bearing Modeling and Manufacturing
To create an accurate small-scale Shafting System Model, a range of bearing-related data can be extracted from the ship's drawings and other related technical manuals.These data points are important for replicating the bearing systems in the scaled model.The following list summarizes and highlights the impact of most relevant parameters: ➔ Bearing Types: Different types of bearings can be identified in the ship's "Shaft Arrangement" drawing, such as journal bearings, thrust bearings, or roller bearings.➔ Bearing Dimensions: Information about the dimensions of each bearing, including inner and outer diameters, width, and any specific design features can be extracted from relevant drawings.➔ Bearing Locations: The position of each bearing along the shaft can be determined from the "Shaft Arrangement" drawing, which helps to establish the correct support configuration and alignment in the scaled model.➔ Bearing Materials: The material properties influence bearing performance and should be replicated in the scaled model.➔ Bearing Lubrication: If available, any information regarding the lubrication systems used for the journal bearings can aid in simulating bearing behavior accurately.➔ Bearing Loads: The allowable load limits for each bearing along with the (expected) applied radial loads, axial loads, and bending moments should be accounted for.➔ Bearing Clearance: Specific information about the radial bearing clearance is critical for replicating the bearing's operational characteristics.➔ Bearing Friction: If available, data associated with the coefficient of friction or the surface properties of the bearings can be essential for advanced modeling purposes.➔ Bearing Foundation: Details regarding the bearing's foundation are necessary to determine the local stiffness of the support structure.➔ Bearing Wear: Information regarding expected bearing wear, maintenance schedules, and replacement intervals can inform the modeling of bearing performance over time.➔ Bearing Cooling Systems: If applicable, details about the cooling system integrated into the bearing can be crucial for accurately predicting the lubricant's heat dissipation.
By extracting these bearing-related parameters from the ship's drawings and manuals, one can construct a bearing model, which may then be scaled to replicate the system of the original ship's shaft arrangement.
In the pursuit of bearing similarity, the Sommerfeld number was considered to ensure that the bearings would function similarly when scaled down.The bearing scaling pertinent to the Case Study was thoughtfully presented in Table 6.For that illustration, a specific set of Aft-Stern-Tube-Bearing and Forward-Stern-Tube-Bearing components from the conventional "Bulk Carrier S" were chosen, and all geometric constraints of the smallscale bearings (with a scale ratio of n = 18) were preserved.

Discussion-Applications
In this study, a novel "Advanced Scaling Methodology" based on π-Theorem is introduced for assessing the similarity of marine shafting systems.Delving into the potential applications and implications of this work, it becomes clear that the presented methodology holds significant promise for leveraging experimental research findings in large-scale applications.This facilitates the exploration of the complex phenomena inherent in the operation of typical marine shafting systems.
Several factors contribute to the appeal of the proposed method, yet it is essential to acknowledge both its advantages and limitations.The utility of this approach is contingent upon the specific problem under investigation, emphasizing the importance of aligning or adjusting the method with the most relevant dimensional parameters to the specific research objectives.The method presented in this paper mainly addresses scenarios necessitating the evaluation, prediction, and assessment of the crucial parameter of shaft deflection, which is associated with the vertical offset of bearings (support points), the longitudinal position of these support points, and the distribution of reaction forces on the shaft line supports when subjected to external loads.The proposed equivalent model methodology, tailored for a scaled small-scale shaft line, emerges as a valuable tool in providing information and accurate shaft deflection predictions, particularly in varying loading conditions.For instance, applying a variable load at the overhang edge of the small-scale model, simulating the typical operation of a propeller, can be effectively modeled and analyzed, providing important insights in regard to the shaft deflection of the large-scale asset.The near-perfect agreement between real model deformation and reverse-engineered shaft deflection, illustrated in Figure 10, highlights the efficiency of the proposed methodology, which essentially utilized the parameter ratios included in Table 4 to develop an accurate small-scale equivalent model for testing.
However, it is crucial to recognize that the method may require further refinements and modifications when confronted with dynamic simulations and phenomena associated with vibrations in the system.These phenomena are intricately linked with the distribution of masses along the shaft line and the specific geometric properties of the system.In such instances, a scaled geometry is required, which will compromise the accuracy of predictions related to deflections and load.A scaled (but not equivalent) model however, would retain its efficiency in providing valuable insights into the respective eigenvalues and vibration modes of the system.Furthermore, a more refined approach could account for shear stresses on the shaft line as well.This would require modified shaft deflection equations for simply supported and cantilever beam, adding several more dimensional parameters in the analysis (shear area, shear stresses, shear forces, etc.).
Moreover, the proposed method holds important implications for simulation-based data acquisition and the comprehension of common challenges encountered in the traditional design of relatively large marine shafting systems.Specifically, it is a conventional practice to design a model before the large-scale installation and application.However, employing the proposed equivalent model methodology now enables the comparison of shaft-line designs that may be geometrically distinct but share inherent similarities, potentially following the same or very similar patterns in terms of their shaft deflections.Similarity features, traditionally addressed in marine shafting systems utilizing the influence factors, might become more noticeable within equivalent models.This insight could be harnessed during the design and optimization process to enhance the reliability of a new system design by transferring knowledge from the operation of other existing similar systems of a different scale.
Additionally, this methodology serves as a foundational analytical element for any model or simulation-based assessment tool requiring a common backbone of features to evaluate significantly different designs in terms of exact geometry.In essence, instead of constructing a surrogate model to assess the performance of a specific shaft-line design, utilizing the dimensional analysis presented in this work, surrogate models can be developed to evaluate the performance of a series of shafting system designs that share similar features, identifying and leveraging their common features in the equivalent model space.This substantially reduces the required data for training, minimizes the necessary computational power for simulation and data production, and ultimately establishes a benchmark method for comparative performance assessment in marine shafting systems.

Conclusions
In conclusion, this paper presents an advanced π-Theorem-based scaling methodology for the similarity assessment of marine shafting systems, developed analytically in Section 3. The π-Theorem is applied analytically for a simply supported beam and a cantilever beam deriving the equation formulations for the respective shaft deflections.The integration of journal-bearing similarity assessment and shaft-line scaling methodology, coupled with advanced dimensional analysis, as presented in Section 4, establishes a robust foundation for the replication and analysis of these systems through scaled models.The proposed scaling methodology ensures both geometric and mechanical similarity by considering, key dimensional parameters such as shaft length, diameter, weight, loads, rotational speed, material properties and bearing locations, to derive the shaft deflections.
The advanced dimensional analysis, yielding specific non-dimensional ratios (summarized in Table 4), guarantees a close resemblance between real-size systems and scaled lab models, facilitating meaningful experimentation.The methodology effectiveness is validated using an example through numerical simulations in the case study presented in Section 5.The comparative analysis produced a negligible error, characteristically illustrated in Figure 10, showcasing a very close resemblance of shaft deflection calculations for the large-scale model and the reverse-engineered deflections utilizing the data from the equivalent small-scale model.The conducted case study demonstrates the utility, workflow and effectiveness of the proposed framework enabling further in-situ experimentation on a lab scale.
The proposed equivalent modeling approach has significant implications for future experimental works aiming to enhance the understanding of phenomena related to the shaft deflections of marine shafting systems.While the method offers advantages in assessing dimensional parameters like vertical offset, the longitudinal position of support points, and the distribution of reaction forces, to predict the shaft deflection, it may require additional considerations for dynamic simulations and vibration-related phenomena.
Furthermore, the proposed method holds promise for simulation-based data acquisition aiming at understanding common challenges faced in traditional designs of large marine shafting systems.The ability to compare and experiment on geometrically different shaft-line designs with inherent similarities enhances the reliability of new systems being designed and enables the development of non-dimensional surrogate models for comparative performance assessment of marine shafting systems.The method can be extended in the future to account for more sophisticated systems, considering also shear stresses with even more parameters and extending beyond some of the current limitations namely of the Sommerfeld number, as described by the same authors in [20].Overall, this work lays a foundation for extending and improving the accuracy and applicability of insitu lab-scale experimentation in the field of marine shafting systems.

➔
Model Testing: Conducting experiments on full-scale marine propulsion systems is often impractical and cost-prohibitive.Scaled-down models provide a cost-effective alternative.Similarity ensures that the behaviors observed in model tests accurately represent those of the full-scale systems.➔ Performance Prediction: Engineers use similarity to predict the performance of fullscale marine propulsion systems based on model test results.By maintaining similarity in key parameters, such as flow rates and proper dimensionless numbers (e.g., the Reynolds number), they can extrapolate data obtained from model tests to real-world scenarios.➔ Prototype Development: Similarity aids in the development and validation of prototype systems.By conducting tests on scaled-down prototypes, engineers can refine designs and identify potential issues before constructing full-scale systems.➔ Research and Development: Engineering and research often require experimentation to explore new technologies and assess their impact on propulsion systems.Similarity ensures that the findings from model tests are relevant to real-world applications.

Figure 1 .
Figure 1.A simply supported elastic beam Equilibrium and boundary equations.


Load-Related Parameters: Shaft weight, External loads, and Shaft speed. Material Properties Parameters: Modulus of elasticity and Shaft inertia. Support Configuration Parameters: Bearing locations and Vertical offset.

Figure 3 .
Figure 3. Key scaling parameters for traditional marine shafting systems.

Figure 5 .
Figure 5. Results (an example case) for the Reverse prediction of shaft displacement.

3 .
Performance Characterization: It effectively characterizes the bearing's performance.4. Comparative Analysis: It facilitates comparisons between bearings under different operational conditions or with different designs.

Figure 6 .
Figure 6.Methodology flowchart for dimensional analysis of marine shafting systems.

Figure 7 .
Figure 7. Various (Shaft Length/Total Shaft Length) ratios for Bulk Carriers of different DWT.

Figure 8 .
Figure 8. qmL 3 /EI ratio across the shaft lines of ships with varying DWT.

Table 1 .
Dimensions of commonly derived mechanical quantities.

Table 3 .
Dimensions involved in cantilever beam dimensional analysis.

Table 5 .
Average error of equivalent scaled model for different scale ratios (n).

Table 6 .
Bearing parameter scaling with Sommerfeld Number.

Table 7 .
Average values and standard deviations for various noteworthy ratios.

Table 8 .
qmL3/EI ratio across the Propeller, Intermediate, and Crankshaft of ships with varying DWT.

Table 9 .
Average Error of Equivalent Model (Model) and Scaled Model (M).